Point-of-care devices were originally designed to allow medical testing at or near the point of care by health-care professionals. Some point-of-care devices allow medical self-testing at home but cannot fully cover the growing diagnostic needs of eHealth systems that are under development in many countries. A number of easy-to-use, network-connected diagnostic devices for self-testing are needed to allow remote monitoring of patients' health. This Outlook highlights the essential characteristics of diagnostic devices for eHealth settings and indicates point-of-care technologies that may lead to the development of new devices. It also describes the most representative examples of simple-to-use, point-of-care devices that have been used for analysis of untreated biological samples.
Point-of-care devices were originally designed to allow medical testing at or near the point of care by health-care professionals. Some point-of-care devices allow medical self-testing at home but cannot fully cover the growing diagnostic needs of eHealth systems that are under development in many countries. A number of easy-to-use, network-connected diagnostic devices for self-testing are needed to allow remote monitoring of patients' health. This Outlook highlights the essential characteristics of diagnostic devices for eHealth settings and indicates point-of-care technologies that may lead to the development of new devices. It also describes the most representative examples of simple-to-use, point-of-care devices that have been used for analysis of untreated biological samples.
Health-care systems today
may be better than ever, but are still
far from ideal because of the following: (i) They consume extensive
financial resources (approximately 10% of each country’s GDP
is spent toward health expenditures, over 7.2 trillion USD in total
in 2015).[1] (ii) They are inconvenient or
even inaccessible to large portions of the population, especially
those in rural communities and developing countries. (iii) They struggle
to detect diseases at early stages due to limited health status screening.
To address these challenges, the World Health Organization (WHO) proposed
the establishment of eHealth systems, and set eHealth as a top priority
in 2005.eHealth is defined as “the cost-effective and
secure use
of information communication technologies (ICT) in support of health
and health related fields, including health-care services, health
surveillance, health literature, and health education, knowledge and
research”.[2] The latest Global Observatory
for eHealth survey of WHO (published in 2016) has shown that 73 countries
already have an eHealth strategy in place,[2] but most probably several years will be needed for eHealth systems
to be fully operational. The three main components of eHealth systems
will most likely be (a) electronic health and medical records that
will enable easy and instant access to patient’s medical history
as well as e-prescribing, and e-booking; (b) telehealth or telemedicine
(the two terms are used interchangeably) that will allow virtual appointments
between physicians and their patients, and remote monitoring of the
health of the patients (even when they are at their homes); and (c)
mHealth (i.e., mobileHealth) that will ease the communication between
health-care providers and patients regarding patient care, emergency
situations, health practices, and treatment adherence (Figure ). Due to the fact that there
is no official definition of the terms “eHealth”, “teleHealth”,
“telemedicine”, and “mHealth” and very
little consistency on their use in the scientific literature,[3] these terms are described here based on the content
that WHO has given them on its official policy documents. When eHealth
systems will be fully operational, some patients will save money and
time by not having to travel to health-care centers and clinics to
visit a physician and perform laboratory tests; they would be able
to telemeet physicians using telemedicine platforms and self-test
themselves (Figure ). Physicians will be more productive as they will be able to meet
more patients; the nonattendance or no-shows rate when eHealth applications
are implemented are significantly lower.[4] The health-care systems might, therefore, be more patient-friendly,
would operate at higher efficiency that would probably lower their
cost,[5,6] and result in better health outcomes.[7]
Figure 1
Left side: overview of main components of a future eHealth
system
for remote examination of a patient at home using telemedicine for
teleappointments between physicians and patients and eHealth diagnostic
devices for remote testing. Right side: simple-to-use devices that
can analyze untreated biological samples at eHealth settings. (A)
Paper strip for urinalysis; (B) paper-based device for accessing liver
function; (C) cellphone attachment that reads disposable lateral flow
tests; (D) sample in–result out device for analyzing nasal
swab to detect nucleic acids; (E) microfluidic cassette connected
to a smartphone dongle for infectious diseases detection; (F) SAW
(surface acoustic waves) biochip for the HIV detection in blood; (G)
chip-based microfluidic device for the detection of lithium in blood;
(H) wristband for real-time detection of glucose, sodium, and chloride
ions in sweat; (I) sweat-monitoring patch for measuring sweat rate,
temperature, and chloride ions concentration; and (J) mouthguard that
integrates a biosensor and a wireless circuit board for uric acid
detection in saliva. The figures were reproduced with permission from
refs (93) (A), (201) (B), (112) (C), (137) (D), (199) (E), (192) (F), (195) (G), (45) (H), (59) (I), and (72) (J).
Left side: overview of main components of a future eHealth
system
for remote examination of a patient at home using telemedicine for
teleappointments between physicians and patients and eHealth diagnostic
devices for remote testing. Right side: simple-to-use devices that
can analyze untreated biological samples at eHealth settings. (A)
Paper strip for urinalysis; (B) paper-based device for accessing liver
function; (C) cellphone attachment that reads disposable lateral flow
tests; (D) sample in–result out device for analyzing nasal
swab to detect nucleic acids; (E) microfluidic cassette connected
to a smartphone dongle for infectious diseases detection; (F) SAW
(surface acoustic waves) biochip for the HIV detection in blood; (G)
chip-based microfluidic device for the detection of lithium in blood;
(H) wristband for real-time detection of glucose, sodium, and chloride
ions in sweat; (I) sweat-monitoring patch for measuring sweat rate,
temperature, and chloride ions concentration; and (J) mouthguard that
integrates a biosensor and a wireless circuit board for uric acid
detection in saliva. The figures were reproduced with permission from
refs (93) (A), (201) (B), (112) (C), (137) (D), (199) (E), (192) (F), (195) (G), (45) (H), (59) (I), and (72) (J).The necessary technology for most modules of eHealth applications
is already available: for example, high-quality teleconferencing for
teleHealth, mobile connectivity for mHealth, and advanced databases
storage and analysis for electronic medical records. The technology
for home-based medical testing, however, is not fully developed,[8] and further research is needed to produce a range
of eHealth diagnostic devices (i.e., low-cost, easy-to-use, network-connected
diagnostic devices for home use) to support eHealth systems.This Outlook aims (a) to
highlight the essential characteristics
of eDiagnostics; (b) to discuss POC diagnostic technologies, which
allow biochemical testing in portable devices without user involvement,
and after further development may lead to new eDiagnostics for self-testing;
and (c) to point toward areas of future research in each POC technology
that could enhance its applicability at eHealth settings. Herein,
we explicitly describe examples of four POC diagnostic technologies
(wearables, paper diagnostics, microcell-based sensing, and chip-based
microfluidics) that have been successfully used for the analysis of
untreated biological samples. Technologies of POC diagnostics whose
requirements in terms of cost or infrastructure imply that they are
suitable for use only in clinics, clinical laboratories, or research
laboratories will not be discussed herein; we refer the reader to
the scientific literature for comprehensive reviews of POC devices.[9−11]
Essential Characteristics of eDiagnostics
Any diagnostic
device must be accurate and precise, and provide
robust results. Diagnostic devices whose intended use is medical testing
outside of clinical laboratories (e.g., at home by untrained individuals)
have to receive additional clearance by local regulatory authorities.
Even though each country imposes different requirements, in general,
regulatory authorities require diagnostic devices for home use to
be accurate, be simple-to-use by untrained individuals, and have little
chance of providing misinformation or causing harm if performed incorrectly.[12] To be used in eHealth systems, eDiagnostics
should be capable of transmitting the test results to cloud-based
systems in an automated and secure way. eDiagnostics should also have
low-to-moderate cost to purchase and use; therefore, they should be
fabricated by readily available materials and be easy to manufacture
using conventional automated processes (e.g., roll-to-roll manufacture,
3D printing,[13,14] etc.). To keep the cost per test
low, eDiagnostics may consist of three elements: (i) a disposable
single-use part (e.g., paper device, chip), where the chemical analysis
would be performed (Figure ); (ii) a dedicated reader or a smartphone attachment (Figure ) that would be used
for signal acquisition; and (iii) a smartphone application for signal
interpretation and test results transmission to cloud databases of
eHealth systems.[15]
Figure 2
Examples of modified
smartphones and dedicated devices for signal
acquisition and data transmission to the cloud: (A) smartphone for
reading lateral flow tests; (B) smartphone for bio-chemiluminescent
detection on paper devices; (C) multifunctional electrochemical detector
for performing various types of electrochemical techniques (e.g.,
chronoamperometry, pulsed voltammetry, potentiometry) using readily
available electrodes; (D) updated version of device C that facilitates
temperature control and electrochemical detection on paper-based devices;
(E) smartphone for liquid-based colorimetric assays; and (F) surface
plasma resonance biosensor installed on a smartphone. The figures
were reproduced with permission from refs (111) (A), (108) (B), (180) (C), (174) (D), (179) (E), and (191) (F).
Examples of modified
smartphones and dedicated devices for signal
acquisition and data transmission to the cloud: (A) smartphone for
reading lateral flow tests; (B) smartphone for bio-chemiluminescent
detection on paper devices; (C) multifunctional electrochemical detector
for performing various types of electrochemical techniques (e.g.,
chronoamperometry, pulsed voltammetry, potentiometry) using readily
available electrodes; (D) updated version of device C that facilitates
temperature control and electrochemical detection on paper-based devices;
(E) smartphone for liquid-based colorimetric assays; and (F) surface
plasma resonance biosensor installed on a smartphone. The figures
were reproduced with permission from refs (111) (A), (108) (B), (180) (C), (174) (D), (179) (E), and (191) (F).eDiagnostics should be able to perform tests in whole, untreated
biological fluids, and be fully integrated (i.e., contain all the
necessary reagents prestored inside them). Ideally, the devices should
require absolutely minimum involvement from the user: the user only
adding the sample (i.e., finger-prick blood, urine, saliva, etc.)
on the device, or wearing the device. A simple extra step such as
adding a drop of a solution (using a dropper) at the device may also
be acceptable, if it is absolutely necessary. Additional fluid handling
steps, such as mixing and pipetting solutions, may increase the complexity
status of the device significantly (based on the strict criteria of
regulatory authorities) and, therefore, may render the device improper
for home use.To achieve the desired level of simplicity of
use, and at the same
time detect a pathological condition, developers of eDiagnostics should
carefully select (i) a biological fluid that could be easily obtained
minimally invasively at home and contains a disease biomarker and
(ii) the point-of-care diagnostic technology that could facilitate
low-cost, easy-to-perform analysis of untreated biological fluids.
Constrains from Biological Fluid
The biological fluids
that can be obtained minimally invasively
at home by the patients themselves are blood, urine, interstitial
fluids, saliva, tears, sweat, and breath. The delivery and availability
of a biological fluid are parameters that would set specific constraints
to an eDiagnostic device. For example, blood samples could be obtained
using a finger-prick procedure or a dedicated blood collection device
(e.g., TAP, Seventh Sense Biosystems Inc.)[16−18] and delivered
to a device quantitatively using a capillary tube, but the device
should be able to detect the target analyte in less than 100 μL
of blood (volume that can be routinely collected from a finger prick
or a blood collection device)[19] and perform
microscale blood plasma separation inside the device. Interstitial
fluids could be obtained by using a fluid collection device that incorporates
microneedles[20−24] or uses iontophoresis.[25] Sweat and tears
could be obtained noninvasively, but they could cause some distress
to the patients (make them perspire or make their eyes weep). Saliva
can be easily obtained using swabs, but the results may be subject
to contamination from food.[26] Especially
sweat, a fluid that has recently attracted the attention of researchers,
is available in very low volume (in the nL range for a 10 mm2 sweat area)[27] and might require either
sophisticated sampling devices to deliver the necessary volume quantitatively[27] or wearable sensors that could stimulate, sample
quantitatively, and then analyze sweat.[28,29]Microscale blood plasma separation inside a portable device
is
quite challenging, and many scientists in academic settings develop
POC devices without performing blood plasma separation;[30] they test their devices with serum or plasma.
Numerous passive and active blood plasma separation techniques have
been developed,[30−32] but a majority of them either are incompatible or
could not be easily integrated within a portable device. Passive plasma
separation performed by glass fibers,[33] asymmetric polysulfone membranes,[34] superhydrophobic
plasma separators,[35] or agglutinating antibodies[36] are few approaches that may be suitable for
POC devices. Blood plasma separation could induce in vitro hemolysis which could interfere with the analysis.[37] Special care should be taken to keep in vitro hemolysis at the lowest possible levels. Blood plasma separation
would be crucial for the quality of the results of devices for blood
analysis; therefore, there is a great need of new materials and approaches
for the reproducible and almost hemolysis-free blood plasma separation
inside a low-cost portable device.
Wearables
for eHealth Applications
Wearable devices require almost no involvement from the user and
would be particularly useful for real-time monitoring of patients
over specific periods of time (from minutes up to several days). The
bright examples of this technology are the wearable sensors for continuous
glucose monitoring (CGM) that have been recently introduced into the
market and rapidly changed the landscape of glucose monitoring for
patients with diabetes. Guardian Connect CGM (Medtronic Inc.),[20,21] Dexcom G6 (Dexcom Inc.),[21,22] and FreeStyle Libre
(Abbott Diabetes Care Inc.)[21,23] are commercially available
CGM systems that detect glucose in interstitial fluids and consist
of a microneedle that is partially inserted into the subcutaneous
tissue and a wearable component that contains the electronic parts
(e.g., potentiostat, wireless transmitter, etc.) for signal acquisition
and wireless transmission. The devices measure interstitial glucose
(using electrochemical detection and proprietary assays) and send
them for storage at dedicated readers or smartphones. Eversence CGM
System (Senseonics Inc.)[38,39] is a small implantable
CGM system that use a fluorescent assay to measure interstitial glucose
for up to 90 days; the device sends the results wirelessly to an external
reader. Other wearable biosensors can be shaped as patches, tattoos,
or bandages or attached into mouthguards, bands, and belts to analyze
sweat, saliva, or tears, etc.[25]For
sweat analysis, wearable patches, bands, and tattoos can facilitate
electrochemical detection of biomarkers such as glucose[40] and electrolytes,[41−48] etc. (Figure ).
Printed electrodes can perform the electrochemical assays, and flexible
electronics can perform signal acquisition and wireless results transmission
to smartphones. For example, Rose et al. converted a commercial RFID
chip to a wireless potentiometric sensor for the detection of sodium
in sweat.[49] Other research groups attached
miniaturized screen-printed electrodes and flexible electronics to
skin to measure (a) glucose, lactate, and alcohol using chronoamperometry;[45,46,50−54] (b) pH, K+, Na+, Ca2+, Cl–, and NH4+ using potentiometry;[41−47] and (c) heavy metal ions (zinc, cadmium, lead, copper, mercury)
using anodic stripping voltammetry (Figure A).[54,55] One such example is
reported by Martin et al., who developed a soft epidermal microfluidic
microchip device using hybridization of lithographic and screen-printed
technology for continuous real-time electrochemical monitoring of
glucose and lactate levels in sweat (Figure B).[50] A single
device can host several electrodes for the multiplex detection of
analytes. For example, Gao et al. developed a fully integrated wearable
device for sweat analysis with potentiometric sensors to detect Na+ and K+ and amperometric sensors to detect glucose
and lactate (Figure C).[53]
Figure 3
Examples of wearable biosensors: (A) temporary
tattoo for electrochemical
sweat sensing of zinc ions; (B) sweat patch for detecting glucose
and lactate using amperometry; (C) electrochemical wristband sensor
for real-time monitoring of metabolites (glucose, lactate) and electrolytes
(Na+, K+) in sweat; (D) diabetes patch showing
real-time monitoring of sweat glucose level; (E) sweat patch for sensing
temperature, glucose, lactate, chloride ions, and pH; and (F) graphene-based
nanosensor attached on tooth enamel for remote monitoring of respiration
and detecting bacteria in saliva. The figures were reproduced with
permission from refs (55) (A), (50) (B), (53) (C), (58) (D), (60) (E), and (74) (F).
Examples of wearable biosensors: (A) temporary
tattoo for electrochemical
sweat sensing of zinc ions; (B) sweat patch for detecting glucose
and lactate using amperometry; (C) electrochemical wristband sensor
for real-time monitoring of metabolites (glucose, lactate) and electrolytes
(Na+, K+) in sweat; (D) diabetes patch showing
real-time monitoring of sweat glucose level; (E) sweat patch for sensing
temperature, glucose, lactate, chloride ions, and pH; and (F) graphene-based
nanosensor attached on tooth enamel for remote monitoring of respiration
and detecting bacteria in saliva. The figures were reproduced with
permission from refs (55) (A), (50) (B), (53) (C), (58) (D), (60) (E), and (74) (F).The inherent inaccessibility of sweat in sedentary individuals
is an important limitation of sweat sensors. A miniaturized iontophoresis
interface could be used to overcome this barrier. The iontophoresis
process involves delivery of stimulating agonists to the sweat glands
with the help of an electrical current for the sweat extraction. Emaminejad
et al. devised a fully integrated electrochemically enhanced iontophoresis
interface (using pilocarpine- and methacholine-based hydrogels as
stimulating agonists) to induce sweat and integrated in a wearable
sweat analysis platform for amperometric monitoring of glucose levels
and potentiometric measurement of Na+ and Cl– ions (Figure H).[45] Following a similar approach, other reports
described the real-time detection of glucose, alcohol, Na+, and Cl–.[45,51,56] Lipani et al. used an array of miniature pixels that contained Pt
decorated graphene working electrodes to achieve transdermal amperometric
glucose detection.[57] The fact that interstitial
fluid was collected at the small known volume of a pixel allowed a
calibration-free monitoring of glucose. Lee et al. developed a wearable
sweat patch for diabetes monitoring and therapy by integrating a set
of electrochemical miniaturized electrochemical sensors (i.e., PEDOT-based
humidity sensor, a PANI-based pH sensor, a graphene-oxide-based glucose
sensor, a graphene-based temperature sensor), a (Au mesh/graphene-based)
heater, and polymeric microneedles loaded with drug (Figure D).[58] The patch was able to measure glucose and then deliver drug transcutaneously.
They tested the performance of the device in diabeticmice.Apart from electrochemical wearable biosensors, colorimetric sweat
sensors have been also reported. Roger’s group devised a number
of thin and soft sweat-monitoring patches for calculating sweat rates
and temperature (Figure I)[59,60] and detecting lactate, pH, chloride, and
glucose levels (Figure E).[59−62] The patches include microfluidic channels and passive valves to
route the sweat from skin pores to reservoirs filled with color responsive
materials for analyte quantitative analysis. A smartphone can capture
and analyze an image of the patch to calculate sweat rates and concentration
of analytes in sweat. The same group developed a textile-based skin
patch that incorporates a passive wireless capacitive sensor for sensing
the amount of sweat released from the surface of the skin.[63] Mu et al. developed skin patches that contained
pH test paper and anion exchangers to measure total concentration
of anions in sweat.[64]Smart bandages
for monitoring wound healing, and mouth and eyes
wearable sensors with connectivity capabilities might be also a useful
technology for eHealth systems. Previous research efforts have developed
smart bandages to monitor (a) uric acid in wounds using printed electrodes
that perform chronoamperometric measurements;[65,66] (b) pH by using PANI-based thread electrodes and potentiometric
detection[67,68] or a fluorescence probe and measuring fluorescence
signals;[69] and (c) irregular bleeding and
external pressure using a capacitive sensor.[70] A mouthguard support that has sensing capabilities and can send
the results remotely could be used as a wearable sensor for saliva
analysis (Figure J).
For example, previous efforts incorporated printed electrodes, a miniaturized
potentiostat, and a Bluetooth low-energy (BLE) transceiver on a mouthguard
for monitoring glucose,[71] uric acid,[72] and lactate.[73] Another
way of analyzing saliva is by attaching a sensor onto a tooth. Mannoor
et al. achieved the remote detection of pathogenic bacteria in respiration
and saliva by attaching a graphene-based nanosensor on tooth enamel
and wirelessly monitoring resistance changes of the nanosensor (Figure F).[74] Borini et al. developed a thin film graphene oxide conductivity
sensor for measuring humidity in breath.[75] Guder et al. prepared a thin, paper-based conductivity sensor that
responds to the breath’s moisture, and they managed to indirectly
calculate respiration rate as the humidity of the breath changes during
inhalation and exhalation cycles.[76] A handful
of wearable sensors have been reported for detection of glucose and
lactate levels in tears by using smartly engineered contact lens amperometric
biosensors.[77−80]Research efforts have also been devoted to develop shirts
and body
suits empowered with sensing capabilities. For example, Pandian et
al. have developed a SmartVest to record electrocardiogram, photoplethysmogram,
body temperature, blood pressure, galvanic skin response, and heart
rate by incorporating EKG electrodes, photoplethysmogram sensor, thermistor,
and galvanic skin sensors into a T-shirt.[81] The development of smart fabrics where sensing elements would be
incorporated into the fabric (and not attached on it) is still in
early stages but is expected to provide fabrics with interesting sensing
capabilities. For example textile electrodes do not require careful
placement of sensors, and allow skin movement without restrictions.[82] Guay et al. integrated a spiral antenna, composed
of a multimaterial fiber, into a cotton shirt and recorded contactless
measurements of respiratory rate; the antenna geometry was changing
during respiration causing changes of the antenna frequency.[83] Coppedè et al. devised an electrochemical
transistor inside a single cotton yarn for real-time detection of
adrenaline and NaCl in sweat.[84]Despite
the significant advances in wearable biosensors, there
are still reliability, stability, reproducibility, and biocompatibility
issues that should be addressed.[25,85] For example,
changes in pH or temperature of sweat may influence the results of
analysis (due to the influence of these factors on several enzymatic
reactions); therefore, advanced calibration methods may be needed
to provide accurate results. The field is also currently focused mainly
on sports and military applications. Several biomarkers related to
diseases (e.g., cancer, HIV, intestinal infections, cystic fibrosis,
and schizophrenia, etc.) could be detected in sweat, tears, and saliva.
It should be noted, however, that the concentration of several biomarkers
in sweat, saliva, tears, and breath might be correlated with pathological
conditions, but normal and pathological levels have not been established
yet.[26] After establishing these levels,
eDiagnostic wearable devices could cover many diagnostic needs at
eHealth systems.
Paper Diagnostics for eHealth Applications
Paper
is a low-cost, lightweight, and flexible material that has
the following four unique properties: (a) Paper has a three-dimensional,
fibrous structure that acts as a microcuvette (the height of which
is around 100–200 μm) where chemical reagents can be
stored effectively. (b) Paper’s structure facilitates pump-free
wicking of fluids. (c) Paper is fluid-permeable allowing the fabrication
of multilayered devices. (d) Paper’s chemical structure (cellulose
moieties) allows its functionalization to different forms (e.g., nitrocellulose,
etc.) or the immobilization of biomolecules. Test strips, lateral
flow tests, and paper-based analytical devices are types of diagnostic
devices that are based on paper and have been widely used for biochemical,
environmental, and food analysis.[85−91] The terms “test strips”, “lateral flow tests”,
and “paper-based analytical devices” do not have clear
definitions and are sometimes used interchangeably in the scientific
literature; they have, however, some design differences as could be
concluded from their descriptions in the relevant sections below.
Herein, we discuss mainly examples of paper devices that could analyze
untreated biological samples. The results of paper devices could be
read by smartphone cameras,[92] smartphone
attachments (Figures C and 2A,B), or smartphone-connected electrochemical
analyzers (Figure C,D), analyzed in a smartphone application, and transmitted to central
systems.
Test Pads
Test strips or test pads
(depending on the shape of the device) are patterned pieces of paper
loaded with chromogenic reagents that change color upon analyte-selective
reactions. Test pads could be read and compared to a calibration chart
by the naked eye, but the quality of the results would be greatly
enhanced if a dedicated reader,[93] a smartphone
camera,[94] or a smartphone accessory[95] would be used for signal acquisition; signal
processing and results transmission could be performed at the smartphone.Test strips have found several applications mainly in POC urinalysis,
and commercially available dipstick tests can facilitate the semiquantitative
determination of several biomarkers (e.g., glucose, ketones, nitrite,
protein, bilirubin, urobilinogen, erythrocytes, leukocytes, creatinine,
microalbumin, etc.) in urine samples (Figure A).[93] In research
settings, among other applications, test pads have been used for the
determination of blood type,[96] the concentration
of hemoglobin in blood,[97] for breath analysis
to detect lung cancer and trimethylaminuria.[98−100] Besides changes
in color intensity, the length of color change could be used as analytical
signal. For example, Guan et al. detected the type of blood,[101] Berry et al. hematocrit levels,[102] and Gerold et al. K+ levels[103] in untreated biological fluids by using distance-based
color measurements.Single-step sensing using colorimetric test
pads would be ideal
for eDiagnostic devices, but existing test pads can typically detect
a limited number of analytes (mainly metabolites) at relatively high
concentration levels (mM levels). For the development of the next
generation of test pads, new single-step sensing approaches and probes
should be developed. The interactions of analytes with micrometer-sized
functionalized particles (a concept that was not so popular in conventional
spectrophotometry due to scattering effects) might provide several
new detection assays for test pads. For example, analyte-facilitated
immunoagglutination of functionalized polymeric particles has been
recently used for the single-step detection of bacteria and specific
proteins; Cho et al. detected bacteria (Escherichia coli and Neisseria gonorrheae) in untreated urine[104] and Lin et al. C-reactive protein in whole
blood.[105] Kappi et al. used the enhancement
effect of biothiols at the photoreduction of silver halide particles
to detect biothiols in blood plasma.[106] Fluorescence-based sensing mechanisms could also be used for the
single-step detection of analytes using test pads as smartphone accessories,
or other low-cost readers can now measure fluorescence and bioluminescence
(Figure B).[107,108]
Lateral
Flow Tests
Lateral flow tests
also known as lateral flow assays (LFAs) are another mature POC testing
technology that has been successfully applied at point-of-care settings.
The brightest example of LFAs is the human pregnancy test that has
revolutionized pregnancy testing. Dozens of lateral flow tests have
been commercialized for the detection of infectious diseases, cancer,
cardiac diseases, illicit drugs abuse, and influenza, just to name
a few.[109,110] LFAs could be a core technology for a number
of eDiagnostic devices, if smartphone attachments (Figures C and 2A)[111−114] or dedicated readers[115−118] read the results of analysis.A typical
lateral flow test strip is composed of three paper pads (sample pad,
conjugate pad, absorbent pad) and a nitrocellulose strip; all four
components are placed inside a plastic housing and partially overlap
to ensure fluid’s flow. The user has to only add the biological
sample (e.g., blood, urine) and a buffer solution and read the results
by the naked eye after few minutes. During the analysis, an immunocomplex
is formed between the target analyte (e.g., disease specific protein
or antibody) and a stored biolabel (e.g., antibodies conjugated to
colloidal gold or latex particles), and then it is immobilized on
the test line of the strip by a capture protein that is present there.
The biolabel colorates the test line to allow the visual/optical detection
of the target analyte (e.g., protein, antibody, metabolite, amplified
nucleic acid, RNA, etc.).[90,119,120]The first generation of LFAs suffered from limited multiplex
capabilities
and poor sensitivity. The multiplex capabilities of LFAs have been
enhanced by either incorporating multiple test strips in a single
device[121] or more than one test lines that
exhibit same[122,123] or different color[121,124] in a single strip. The sensitivity of LFAs has been significantly
improved by using various types of biolabels. Fluorescent dyes,[117,123] carbon nanotubes,[125] quantum dots,[126] doubly labeled complexes,[127] multifunctional nanospheres,[128] upconversion nanoparticles,[129] liposomes
loaded with colorimetric[130] or fluorescent
dyes,[131] photoluminescent,[132] and strontium aluminate[114] are a few biolabels that have been used in LFAs for the
detection of disease biomarkers.Enzyme-based,[133] silver-based, or gold-based
amplification schemes[134] could also enhance
the sensitivity of LFAs, but require additional fluidic steps that
complicate the analysis. Yager and co-workers demonstrated that two-dimensional
paper networks can facilitate multistep delivery of chemicals on a
test line without the user performing extra steps, and used this approach
to perform a signal-amplified immunoassay for the determination of
malaria antigen.[135,136]Yager and co-workers have
also combined paper pads, lateral flow
assays, and highly engineered device’s housing parts to develop
fully autonomous diagnostic devices for performing immunoassays and
nucleic acid detection assays. More specifically, they described an
instrument-free, sample-to-result diagnostic device to detect pathogenic
bacteria (ldh1 or mecA gene targets of methicillin-resistant Staphylococcus aureus) in human nasal swab specimens by
performing on-board sample dilution and lysis, DNA fragmentation,
DNA isothermal amplification, and DNA detection using a lateral flow
assay (Figures D and 4A). All the necessary electronics (PCB control board,
four heaters, switches, batteries), the reagents for the chemical
reactions, and the buffer solutions were stored inside the device.
The user had just to add the nasal swab inside the device and slide
the device to start the analysis; the results were read after 60 min
on the lateral flow strips of the device (Figure D).[137] The same
group reported a disposable, fully autonomous diagnostic device to
detect target proteins. They detected two nucleoproteins from influenza
virus A and B in nasal swab specimens. The device had all the necessary
reagents and buffer solutions prestored inside its housing and performed
sample lysis, protein capture, secondary labeling, rinsing, and signal
amplification without user intervention. The multiplex results for
infection from influenza A and B were provided in 35 min. The schematic
diagram of the device is depicted in Figure B.[138]
Figure 4
(A) Diagram
of a sample in–result out device for nucleic
acid detection from swab specimens. A user introduces a swab into
the sample chamber, and then the sample is delivered to an automated
valve and is split into two physical channels followed by isothermal
amplification and lateral flow detection. (B) Diagram of a sample
in–result out device for protein detection from swab specimens.
Nasal swab is first introduced into a swab port containing buffer
followed by activating the device to release aqueous reagents into
the paper network which rehydrates the stored dry reagents and then
split the sample into two channels for lateral flow detection. (C)
Diagram of a chip-based microfluidic device that performs signal-amplified
immunoassays for multiplex detection of infectious diseases. (D) Design
of a 3D-μPAD that hosts vertical and lateral pathways for performing
immunoassay with visual detection. (E) Steps during analysis by using
a sliding-strip 3D-μPAD. The strip is moved from position 1
to 3 along with adding the sample and water at specific time intervals.
The figures were reproduced with permission from refs (137) (A), (138) (B), (199) (C), (149) (D), and (151) (E).
(A) Diagram
of a sample in–result out device for nucleic
acid detection from swab specimens. A user introduces a swab into
the sample chamber, and then the sample is delivered to an automated
valve and is split into two physical channels followed by isothermal
amplification and lateral flow detection. (B) Diagram of a sample
in–result out device for protein detection from swab specimens.
Nasal swab is first introduced into a swab port containing buffer
followed by activating the device to release aqueous reagents into
the paper network which rehydrates the stored dry reagents and then
split the sample into two channels for lateral flow detection. (C)
Diagram of a chip-based microfluidic device that performs signal-amplified
immunoassays for multiplex detection of infectious diseases. (D) Design
of a 3D-μPAD that hosts vertical and lateral pathways for performing
immunoassay with visual detection. (E) Steps during analysis by using
a sliding-strip 3D-μPAD. The strip is moved from position 1
to 3 along with adding the sample and water at specific time intervals.
The figures were reproduced with permission from refs (137) (A), (138) (B), (199) (C), (149) (D), and (151) (E).The quality of results of LFAs depends mainly on three factors:
(a) the strong and selective binding of analyte with the capture and
the reporter biorecognition elements (i.e., antigens, antibodies);
(b) the strong emitting properties of biolabels; and (c) the elimination
of any nonspecific binding events that result in false positive results.
In the past few years significant progress has been achieved in developing
approaches that can provide strong visual, optical, or fluorescent
readout, but developers still depend on a trial-and-error approach
to select the appropriate biorecognition elements (capture and reporter
antibodies) for a target analyte and appropriate blocking reagents
that eliminate false positive results. Even though the equilibrium
dissociation constant (KD) that is an
indicator of the strength of the specific antigen–antibody
interactions has been determined (by oblique-incidence reflectivity
difference[139] or Biacore systems[140]) for most antigen–antibody pairs, these
values could be used for the initial selection of possible pairs that
should be further evaluated. This is because KD values measure the antigen–antibody interactions under
ideal conditions (i.e., controlled immobilization of capture element
in a flat chip and binding of the target analyte from standard solutions)
that are different compared to those occurring during a lateral flow
test (i.e., uncontrolled immobilization of biocapture elements on
porous nitrocellulose or nanoparticles, target analytes partially
covered by a protein corona).[109] The thorough
and detailed study of antigen–antibody interactions in realistic
conditions and the understanding of several effects (i.e., protein
corona, matrix effects due to high concentration of proteins) that
may interfere with the antibody–antigen binding and result
in nonspecific binding events would lead to chemical approaches that
would ensure strong antigen–antibody binding and enhanced sensitivity
and selectivity.
Paper-Based Analytical Devices (μPADs)
Microfluidic paper-based devices (μPADs) are another type
of paper device that could find several applications in eDiagnostics.
μPADs are composed of one or few stacked layers of patterned
paper that expose hydrophilic channels that can store reagents and
allow controlled wicking of fluids inside them.[141,142] Hundreds of research efforts have described various designs, fabrication
methods, approaches to add functionalities (e.g., flow rate control,
flow direction control, etc.), and various detection modes (e.g.,
colorimetric, electrochemical, etc.)[86,88,143] that could allow the development of autonomous POC
devices. Similarly to other types of paper devices, if μPADs
are coupled with dedicated readers or smartphones, then they could
become eDiagnostic devices.μPADs are multifunctional
devices because different areas of a device can perform different
functions. For example, in a 3D-μPAD, top layers could filtrate
the sample; middle layers could host a chemical reaction (e.g., enzymatic
reaction), and bottom layers could host the analytical detection.
Several diagnostic products in the market (by the leaders of field
of medical diagnostics or start-up companies) use test strips (a type
of μPAD) for the detection of disease biomarkers. For example,
CardioChek Home Use Analyzer test system[144] (a CLIA-waived system that measured glucose, HDL/total cholesterol,
triglycerides in a drop of untreated blood) uses paper-based strips
to perform multistep assays for analyte detection. More specifically
for cholesterol detection, (i) the blood is first filtrated through
a series of filter papers that separate plasma. (ii) Plasma wicks
toward a sensing pad (that contains dry reagents). (iii) Enzymatic
reactions occur, which involve cholesterol and chromogenic reactions
that involve one of the products of the enzymatic reaction to colorize
the test pad.[145] A reader (that incorporates
LEDs and photodiodes) measures the color change of the pad using reflectance
measurements.In the literature, several reports describe the
design and use
of μPADs for biochemical analysis.[86,88,143] In some of them the user only adds the sample
and interprets the readout, and in others they should perform few
or even many manual steps.[88] Here we describe
mainly examples of fully autonomous μPADs. Whitesides and co-workers
developed various 3D-μPADs for the evaluation of liver function
by measuring aspartate aminotransferase (AST), alkaline phosphatase
(ALP), alanine aminotransferase (ALT), and total serum protein concentration
in untreated blood (Figure B). The devices required from the user only the addition of
a drop of blood and the acquisition of an image of the back of the
device after 15 min;[146,147] all steps of the assay (blood
filtration, enzymatic modifications, and colorimetric reactions) were
performed inside the device. Mace and co-workers developed 3D-μPADs
for the detection of malaria and dengue fever in lysate blood and
human chorionic gonadotropin (hCG) in urine by performing indirect
immunoassays inside the device (gold nanoparticles were used as reporting
agents) (Figure D).[148,149] Nosrati et al. detected live and motile sperm concentrations and
sperm motility by using a 3D-μPAD; the user had to only add
the sperm and a buffer onto the device and take an image of the back
of the device after 10 min.[150] Verma et
al. developed a 3D-μPAD containing a sliding strip that performed
ELISA with small involvement from the user. The user should add the
sample, and few drops of water on the device, and move the strip at
scheduled times to certain positions (Figure E).[151] They tested
the device for the detection of C-reactive protein in blood using
a three-step ELISA and colorimetric detection. Wang et al.[152] and Robinson et al.[153] developed foldable devices to achieve precise control over the timing
of the reaction and detected β-hydroxybutyrate (BHB) and phenylalanine
in blood. Several other efforts have also prepared fully autonomous
paper-based analytical devices for blood analysis,[154−158] and urinalysis.[159−163]A number of experimental approaches that have been reported
in
the literature could greatly enhance the applicability and performance
of μPADs if they would be incorporated in fully autonomous devices.
For example, Henry and co-workers have recently developed an electrochemical
μPAD by using antibody functionalized Au microwires and electrochemical
impedance spectroscopy to detect virus particles that are selectively
bound on the electrode during analysis. They detected West Nile particles
in cell culture media at concentration levels as low as 10 particles
per 50 μL sample.[164] Sikes and co-workers
have developed a polymer-based signal amplification method[165−168] that provides time independent results and improves the ease-of-perception
of the visual readout of colorimetric paper immunoassays compared
to other enzymatic techniques.[169,170] Connelly et al.[171] developed a device composed of plastic film,
magnetic slips, and paper disks that can perform nucleic acid tests
in untreated fluids to detect E. coli in human plasma.
All steps of the assay (cell lysis, sample preparation, isothermal
DNA amplification, and detection step) were performed inside the device.
The user, however, had (i) to manually add the reagents (e.g., lysis
buffer, master mix, SYBR Green, etc.) into the device’s ports;
(ii) to slide the moving part of the device at designated times and
regions to perform the different steps; (iii) to place the device
into an incubator during the amplification step; and (iv) to use a
portable UV lamp and a smartphone camera to obtain the results. Bender
et al. detected DNA in whole blood on a test strip using simultaneous
isotachophoresis (for DNA separation), recombinase polymerase amplification
(for nucleic acid amplification), and fluorescence DNA detection.[172] The user also had to add the necessary reagents
manually on the test strip. In principle, both approaches described
by Connelly et al. and Bender et al. could be simplified significantly
by storing the reagents in dry form inside an appropriately designed
device; the user should then have to add only the sample and few drops
of water. Li et al.[173] and Tsaloglou et
al.[174] developed autonomous electrochemical
3D-μPADs that could detect specific DNA sequences (e.g., for
the detection of hepatitis and tuberculosis). The main limitation
of these approaches was that they used purified DNA as samples. If
the devices would be modified to also perform DNA extraction steps,
which is something doable as demonstrated by Bender et al., then these
devices could analyze untreated biological samples.Several
other approaches and designs may lead to fully autonomous
and operational devices; however, this needs to be demonstrated by
having the relevant μPADs perform all the steps of the analysis
(e.g., sample preparation, analyte detection, etc.) on board.
Microcell-Based Sensing for eHealth Applications
Paper devices have been widely
used for decades for performing
chemical measurements in the field partially because photometers,
electrochemical cells, and potentiostats were bulky and expensive.
Recent advances in microelectronics, LEDs, and photodiodes have allowed
the development of low-cost, miniaturized readers and smartphone attachments
to perform spectrophotometric (Figure E)[108,175−179] and electrochemical measurements (Figure C,D)[180,181] in low sample volumes.
Devices that could analyze less than 100 μL of untreated samples
inside a microcuvette, electrochemical microcell, or other sample
holders could be called microcell devices. Due to low volume of a
microcell and if the microcell is designed appropriately, then the
sample may flow inside the device without applying any external force
by capillary forces. HemoCue Inc. uses a microcell approach to detect
hemoglobin and glucose in whole blood (using absorbance measurements),[182,183] and albumin in urine (using turbidity measurements).[184] Their technology is based on the storage of
all the assay’s reagents in dry form inside a microcuvette.
The reagents are rehydrated after the addition of the sample, and
the optical measurements are performed. Several commercial available
glucometers, even though this is not clearly stated, use an electrochemical
microcell to measure glucose in whole blood; untreated blood flows
inside a small gap (actually a microcell with volume less than around
1 μL) found in the test strips and reacts with the dry reagents
and the printed electrodes found there. Other meters that have been
recently developed can detect lactate, ketones, and blood coagulation
using a similar approach. For example, CoaguChek XS measures prothrombin
time after activation of coagulation with thromboplastin using amperometry,
and then the prothrombin time is converted to International Normalized
Ratio (INR).[185] Zhang et al. developed
a smartphone-based potentiometric biosensor for measuring salivary
α-amylase. The saliva was introduced into a preloaded sensing
chip by a capillary channel, followed by pressing the sensing chip
to perform the potentiometric measurement.[186]Impedance spectroscopy is an attractive electrochemical technique
for microcell-based analysis as it does not require a label compound
and could be performed in a single step (after a simple washing step).
For example, Villagrasa et al. measured hematocrit levels in 50 μL
of whole blood in one step by performing impedance measurements on
top of screen-printed gold electrodes.[187] Nidzworski et al. proposed an impedance-based method to detect anti-M1
antibodies (biomarker of influenza virus) in throat saliva or nasal
samples by using functionalized boron-doped diamond electrodes.[188] McMurray et al. developed an impedance biosensor
based on functionalized nanoelectrodes for the detection of D-dimer
protein (for diagnosis of presence of blood clot) in whole blood.[189] Surface plasmon resonance (SPR) is another
technique that could use a microcell-based approach to detect analytes
in undiluted biological samples.[190] For
example, Liu et al. developed a smartphone attachment (Figure F) to perform surface plasmon
resonance (SPR) measurements inside a capillary and monitored specifically
the binding of antibodies to a functionalized sensing element.[191]Recently, Turbé et al. developed
a technique that could
analyze an untreated biological sample in one step and detect a target
analyte by monitoring phase changes of shear horizontal surface acoustic
waves (SAW) caused by specific interactions between the sensing element
of the device and the analyte.[192] The analysis
is performed on a disposable biochip and is controlled by a pocket-sized
reader (Figure F)
that is expected to cost $30. A mobile device (laptop or smartphone)
was used to analyze, display, and transmit the results. The authors
used this system to detect anti-HIV antibodies in 10 μL of standard
solutions and an HIV-positive human blood plasma sample.Microcell-based
electrochemical and spectrophotometric assays could
allow high-quality analytical assays that could support eDiagnostics.
The prerequisite of microcell-based assays is, however, the effective
storage of reagents inside a microcell.
Chip-Based
Microfluidics for eHealth
Applications
Since the late 80s, chip-based microfluidics
has been expected
to revolutionize point-of-care diagnostics. The truth is that for
many years iStat (Abbott Point of Care Inc.) has been one of the very
few portable devices that found their way to the market.[193] The main disadvantage of chip-based microfluidics
is that they typically need pumps, valves, and containers with solutions
to perform the chemical analysis. To find applications in eHealth
systems where there are cost and operation constraints, a chip-based
microfluidic device should contain all the reagents prestored and
should operate without bulky pumps. Very few research efforts have
managed to develop chip-based microfluidic devices with those characteristics.
Lafleur et al. developed an autonomous microfluidic device (i.e.,
immunoassay card) that was composed of plastic, paper-based pads (loaded
with dry reagents), and membranes for plasma separation and visual
detection. The user applied the sample and buffer solutions, and the
pneumatic control system, which applied air pressure and vacuum, performed
all the steps of the assay (blood filtration, aliquoting, dilution,
IgG removal, reagent rehydration, and the multistep detection assay)
automatically. The detection was facilitated via colored spots that
appeared on the detection membrane. The device detected malaria antigens
and Salmonella Typhi antibodies in whole blood.[194] Floris et al. developed a fully autonomous chip-based microfluidic
system (Figure G)
for the detection of lithium in a drop of untreated blood.[195] The system was composed of disposable microfluidic
chips that were filled with a buffer and a hand-held analyzer. During
analysis, lithium ions were separated from other blood ions via capillary
electrophoresis and quantified by conductivity measurements.[195] Sia and co-workers have developed a technology
that allowed them to perform multistep signal-enhanced immunoassays
(that use reporter antibodies conjugated with gold nanoparticles and
a silver amplification step) with optical readout inside a microfluidic
cassette without user intervention, or any external instrumentation
(e.g., detector, pumps) (Figure C).[196−200] The technology was based on cassettes that contained (a) microfluidic
channels filled with up to 14 separate liquid reagents (i.e., antibodies,
washing, and signal-development solutions) spatially separated by
air pockets and (b) an on-board optical detection system (Figure C). The reagents
were moved inside the cassette, and a test started once vacuum was
applied (by a negative pressure chamber activated by pushing a button).
A smartphone controlled the whole operation. The device could analyze
2 μL of diluted blood and provide results in 15 min (Figure E). The performance
of the device was tested on the multiplex detection of HIV, treponemal
syphilis, and nontreponemal syphilis antibodies,[198] and the multiplex detection of hemoglobin and HIV antibodies
using real blood samples.[199]Both
approaches described by Floris et al. and Sia et al. used
a chip prefilled with solutions. This approach is advantageous as
it eliminates the need of the use of separate liquid reagents and
separate pumps for fluid handling. The continuous reduction of cost
of integrated electronic systems and components, and scientific innovation
in the storage of solutions inside chips could soon provide microfluidic
systems with enhanced capabilities for eDiagnostics.
Remarks and Conclusions
In this Outlook, we described the
design constrains that new eDiagnostic
devices should fit and highlighted four POC technologies (i.e., wearables,
paper diagnostics, microcell-based sensing, and chip-based microfluidics)
that could be the core technologies of new eDiagnostics. We also briefly
described examples of devices that have been successfully used for
the analysis of untreated biological samples. Interestingly, out of
thousands of devices that have been developed in academic laboratories
for POC testing, a very small percentage of them have been used to
detect analytes in untreated biological fluids using an analytical
procedure that is suitable for home applications: the user only adding
the sample (i.e., finger-prick blood, urine, saliva, etc.) on the
device and reading the results after few minutes.The development
of a new diagnostic device is a difficult if not
Herculean task.[201] It is also very expensive;
a study has identified that in 2010 the average cost to bring a diagnostic
device (i.e., 510(k) product) from concept to market into the US is
more than $30 million, and the major part of the cost was associated
with the regulatory clearance of the device.[202] To improve the chances of developing a technology that could transition
from a research idea, to an eDiagnostic device, scientists and developers
might need to consider the followings: (i) A new diagnostic device
must solve a “real” problem/diagnostic need, and the
existing solution to that should be inadequate or unaffordable.[201] They should, therefore, carefully define the
problem and justify why the new diagnostic device covers the need
and leads to a better health outcome. (ii) A diagnostic need that
impacts a substantial number of patients might be more prioritized
than others. eDiagnostic devices for monitoring chronic diseases,
metabolic disorders, and disease treatment, for detecting common viral
infections (e.g., the flu, streptococcus), and for detecting biothreat
agents (after bioterrorism attacks or pandemic conditions) might be
needed at high volumes. (iii) The clearance from local regulatory
authorities is a prerequisite that eHealth devices should achieve;
therefore it would be useful if they design the devices to meet the
criteria that regulatory authorities set. For example, US FDA uses
seven criteria to assign the test a complexity status (waived–moderate–high);
only waived complexity tests can be used outside laboratory settings
(get the CLIA-waived status).[12] The criteria
and scoring rubric of them can be found in ref (12). Currently, scientists
in the field of POC diagnostics use the “ASSURED” criteria
as design guidelines.[201] Not all “ASSURED”
criteria, however, apply to eHealth applications: for example, the
“Equipment-free” and to a lower extent the “Affordability”
criteria). Under public health emergency situations (e.g., Ebola and
Zika virus outbreak), regulatory authorities might follow a different
expedited clearance procedure (e.g., WHO Emergency Use Assessment
and Listing (EUAL) procedure)[203] that accepts
variations in the regular acceptable criteria, but in general these
are unique cases. (iv) eDiagnostic devices should be able to analyze
untreated biological samples; therefore, the performance of the devices
should be evaluated using untreated samples or preferably clinical
samples.[204] Scientists within academia
typically use buffer solutions spiked with analyte, or diluted biological
fluids spiked with analyte as “samples”.[204] Untreated biological samples have a very complicated
chemical matrix that can severely interfere with the analysis. If
researchers do not have access to real biological samples, then it
would be preferable if they analyze spiked solutions of model matrixes
(e.g., artificial plasma with high protein concentration around 70 mg/mL,
artificial urine). (v) eDiagnostic devices should be compatible with
various subsystems of eHealth systems and other diagnostic devices.
(vi) The communication between eDiagnostic device and eHealth systems
should be secure to ensure safety and confidentiality of the personal
health records. (vii) The performance metrics (e.g., sensitivity,
specificity) and definitions of each metric used during a clinical
assessment of a device are different than the definitions and performance
metrics (e.g., detection limit, linear dynamic range of detection)
used in chemical science.[204] (viii) There
is a gap between proof-of-concept testing in a laboratory and a full
scale clinical trial that the developers should bridge by performing
initial field trials of the devices. These tasks are outside the expertise
of scientists, and acquiring funding for them could be difficult (mainly
because scientists are unaware of relevant funding mechanisms); however,
the feedback from end users will improve chances of success.[201] (ix) The “valley of death”, the
phase between research and successful commercialization, could be
crossed more easily by forming an interdisciplinary team (that include
scientists, engineers, physicians, public health specialists, and
entrepreneurs). (x) Experience and lessons drawn from others trying
to move their technology from the laboratory to the hands of consumers
could be very useful.[201,205]The landscape of medical
self-testing is changing rapidly. A decade
ago, point-of-care devices were mainly used by health professionals
at or near the point of care (e.g., in clinics, etc.), and very few
self-testing devices (e.g., thermometers, blood pressure meters, glucometers,
and pregnancy tests) were available to consumers. Within the past
years, several point-of-care devices have been modified and further
developed to become self-testing devices for blood oxygen, blood glucose
and continuous glucose monitoring, for recording electrocardiograms,[206,207] or for detecting analytes such as lactate, creatinine, cholesterol,
uric acid, hemoglobin, illicit drugs, etc. Several of these self-testing
devices could be called eDiagnostic devices as they can seamlessly
communicate with smartphones that store, analyze, and transmit the
results to physicians. Several other eDiagnostics have already got
regulatory clearance and would reach the market soon. For example,
Tyto Care Inc. has developed a standalone device with connectivity
features that incorporates digital cameras to view the ears, throat,
and skin; a microphone to listen to the heart, lungs, and abdomen;
and a basal thermometer.[208] Healthy.io
Ltd. developed a urinalysis test kit for home use that measures 10
parameters. The kit is composed of a urinalysis test strip, a carefully
designed calibration chart, and a smartphone application that use
proprietary computer vision algorithms to measure the concentration
of target analytes accurately in any lighting conditions using any
smartphone.[209] Information communication
technologies (ICT) have already changed the way that people communicate,
work, shop, date, and entertain, and may soon change how people receive
health-care services.
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Authors: Esteban Piccinini; Gonzalo E Fenoy; Agustín L Cantillo; Juan A Allegretto; Juliana Scotto; José M Piccinini; Waldemar A Marmisollé; Omar Azzaroni Journal: Adv Mater Interfaces Date: 2022-03-18 Impact factor: 6.389