| Literature DB >> 28632188 |
Giovanni Rateni1, Paolo Dario2, Filippo Cavallo2.
Abstract
A new generation of mobile sensing approaches offers significant advantages over traditional platforms in terms of test speed, control, low cost, ease-of-operation, and data management, and requires minimal equipment and user involvement. The marriage of novel sensing technologies with cellphones enables the development of powerful lab-on-smartphone platforms for many important applications including medical diagnosis, environmental monitoring, and food safety analysis. This paper reviews the recent advancements and developments in the field of smartphone-based food diagnostic technologies, with an emphasis on custom modules to enhance smartphone sensing capabilities. These devices typically comprise multiple components such as detectors, sample processors, disposable chips, batteries and software, which are integrated with a commercial smartphone. One of the most important aspects of developing these systems is the integration of these components onto a compact and lightweight platform that requires minimal power. To date, researchers have demonstrated several promising approaches employing various sensing techniques and device configurations. We aim to provide a systematic classification according to the detection strategy, providing a critical discussion of strengths and weaknesses. We have also extended the analysis to the food scanning devices that are increasingly populating the Internet of Things (IoT) market, demonstrating how this field is indeed promising, as the research outputs are quickly capitalized on new start-up companies.Entities:
Keywords: IoT; biosensors; cloud computing; food analysis; food safety; lab-on-smartphone; mobile diagnostics; on-site detection; smartphone sensor; spectroscopy
Mesh:
Year: 2017 PMID: 28632188 PMCID: PMC5492046 DOI: 10.3390/s17061453
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Flow diagram of the paper selection process.
Summary of recent lab-on-smartphone biosensor platforms.
| Detection Target | Methodology | Materials | LoD/Test Time/Performance | Smartphone Use | Reference |
|---|---|---|---|---|---|
| Fluorescent imaging | Antibody, quantum dots, UV LED | 5–10 CFU mL−1 | Cellphone imaging with camera attachment | [ | |
| rbST antibodies in milk | Microsphere fluorescent immunoassay | Antibody, quantum dots, UV LED and white LED | 80% true-positive rate and 95% true-negative rate | Cellphone imaging with camera attachment | [ |
| Lactose and galactose in undiluted food samples | Engineered bacteria fluorescence | Blue light and optical filter | 1–1000 mM | Cellphone imaging | [ |
| Peanut allergen in food samples | Colorimetric assays | ELISA allergen test kit, cellphone attachment with 2 test tubes and 2 LEDs | ~1 parts per million (ppm), 20-min preparation phase | Cellphone assay with camera attachment | [ |
| Aflatoxin B1 in maize | Lateral flow immunoassay | Paper strip, close-up lens and a white LED | 5 μg/kg | Smartphone imaging via LFIA reader adapter | [ |
| BDE-47 in food sample | Microfluidics and competitive ELISA | Arduino Nano, PCB, microfluidic chip | Readout time of 15 min and input sample volume considerably reduced | Smartphone as power source, imaging reader and cloud sender | [ |
| Red wine properties | Paper microfluidics, colorimetric assay, and PCA | Chemical dyes | Successful distinction of red wines by their grape varieties and oxidation. | Smartphone imaging | [ |
| Amines as indication of foodborne pathogens in meat | Membrane technology colorimetry and unsupervised chemometric tools | Dyes | Down to 1 ppm concentration of amine | Camera imaging | [ |
| Antibiotic residues in milk | SPE and fluorescence spectroscopy | Photography lightbox with fluorescent light | LoC 0.50 mL−1 and LoQ 1.50 µg mL−1 | Smartphone camera used as spectrometer | [ |
| Glutamate in food compound, instant soup and wines | Paper-based colorimetric assay | Glutamate-specific enzyme | 0.028 mmol L−1 | Camera acquisition and analysis | [ |
| ALP as indicator of incorrect milk pasteurization | Disposable lateral flow-through strip | Sample pad | 0.1 U L−1, within 10 min with a detection range of 0.1–150 U L−1 | Image acquisition and Matlab analysis | [ |
| OA and STX in shellfish | Competitive immunoassay strip | 3D-printed smartphone strip adapter | 2.800 ng mL−1 for OA and 9.808 ng mL−1 for STX in 30 min | Camera acquisition via strip adapter and data processing | [ |
| Fluoride in water | Colorimetric imaging | Compact sample chamber adapter for smartphone | Linear range 0–2 mg L−1 | Smartphone colorimeter | [ |
| Catechols in water | Colorimetric imaging | 96-well sensor array, light-tight box, white LED | PCA, HCA and LDA for quality discrimination and PLS for quantitative determination | Smartphone colorimeter coupled to remote server | [ |
| Colorimetric immunoassay | Biosensor cartridge, lens-free CMOS image sensor, Wi-Fi module | 1.4 × 104 CFU mL−1 | Dedicated app to operate the system and upload on internet server | [ | |
| DNA transduction on microfluidic device | Magnetic beads | Down to 20 genomic copies of | Custom written app for cell phone image analysis | [ | |
| Clenbuterol | Electric field-driven immunoreaction | Functionalized electrodes | 0.076 ng mL−1 CLB in 6 min | USB Smartphone tool biochip | [ |
| Pattern recognition of Brazilian honey samples | Cyclic voltammetry assay | Electrode of gold, homemade potentiostat with USB connection and Bluetooth module | Successfully generation of voltammetric fingerprints of numerous honey samples | Chemometric data processing on smartphone | [ |
Figure 2Schematic overview of the cellphone attachment for fluorescence diagnostics developed by Ludwig et al. [14]. Adapted with permission of Springer.
Figure 3The iTube platform for performing cellphone-based colorimetric assays developed by Coskun et al. Adapted from [16] DOI: 10.1039/c2lc41152k with permission from The Royal Society of Chemistry. All rights reserved.
Figure 4Schematic of the integrated mobile-interfaced diagnostic platform developed by Chen et al. Reprinted from [18], with the permission of AIP Publishing.
Figure 5The on-site marine toxins diagnostic adapter developed by Fang et al. Adapted from [24] DOI: 10.1039/c2lc41152k with permission from The Royal Society of Chemistry. All rights reserved.
Figure 6Schematic and picture of the smartphone-based fluoride test proposed by Levin et al. Adapted from [25], http://dx.doi.org/10.1016/j.scitotenv.2016.01.156 under the Creative Commons license http://creativecommons.org/licenses/by/4.0/.
Figure 7Portable platform deployed for point-of-use analyses. Electrochemical system. (a) Sample; (b) hand-held potentiostat; (c) and smartphone; (d) Reprinted from [29] with permission from Elsevier. http://www.sciencedirect.com/science/article/pii/S0013468616320400.
Summary of recent smartphone spectroscopy systems.
| Detection Target | Methodology | Materials | LoD/Performance | Smartphone Use | Reference |
|---|---|---|---|---|---|
| Microbial spoilage on beef | Mie scattering | Positioning stages, 880 nm NIR LED | 101 CFU mL−1 to 108 CFU mL−1 | Built-in gyro sensor and camera spectroscopy | [ |
| Generic application | Spectroscopic colorimetry | 3D printed housing, LED array, Phidgets board, and VIS-spectrometer | Good agreement to certified spectra with dE/E ranging from 0.5% to 1.5% | IoT device to be used with smartphone | [ |
| Glucose and ethanol in alcoholic beverages | FTIR spectroscopy and independent component analysis | Graphite light source, ATR prisms, 2-dimensional light receiving device for smartphone | Wavelength resolution 0.057 μm | Proposed as a bean-size spectroscopic module to be mounted on smartphones | [ |
| ChlF detection in a variety of apple samples | UV fluorescence spectroscopy | UV LED, nozzle-like enclosure VIS-spectrometer, Arduino pro mini µ, Bluetooth | Satisfactory agreement observed between ripeness and fluorescence signals | Dedicated app interface on smartphone to communicate, receive, plot, and analyse spectral data | [ |
| Fluorescence-based imaging | 4405-nm 10 W LEDs, CCD camera, optical filter at 670 nm, and Wi-Fi transmitter | Localization of most fecal contamination spots successfully identified | Outlined real-time broadcasting to monitoring device such as smartphone | [ | |
| Generic food sensing application | Hyper-spectral imaging | Tunable MEMS FPI, Bluetooth | Operation range 450–550 nm with spectral resolution 8–15 nm @FWHM | Mobile phone-compatible hyper-spectral imager | [ |
| Food quality testing | Diffractive interference refractometry | 5 mW semiconductor red laser, circular spatial filter, Si detectors, and a PDMS device | LoD of 4 × 10−4 RIU | Outlined smartphone interface based on transmission mode configuration | [ |
| Sugar content prediction in pears | NIR spectrometry and PLS | 4 tungsten lamps, LVF 620–1080 nm and CMOS linear detector array | Low power, SNR ratio up to 5000, R2 0.96, SEC 0.29° Bx and SEP 0.46° Bx | Instrument wirelessly operated with smartphone | [ |
Figure 8Rendering of the spectrometer-based colorimeter SpiderSpec. Reproducted from [31] with permission from SPIE.
Figure 9Schematic of the different components of the smartphone spectrometer prototype. Adapted from [35]. Published online 8 September 2016. doi:10.1038/srep32504, under the Creative Commons license http://creativecommons.org/licenses/by/4.0/.
Figure 10Schematic of the hand-held spectrometer and picture and schematics of the measuring head for interactance mode measurement developed by Yu et al. [39]. Adapted by permission of SAGE Publications, Ltd.
Approximate cost related to works which have provided an estimate.
| Platform | Approximate Cost | Reference |
|---|---|---|
| Smartphone with fluorescence microscope attachment | Attachment of around $140, significantly reduced compared to the equipment costs for the reference method | [ |
| Akvo Caddisfly | Expected to retail at $75, without the phone and mapping system, plus $0.3 for each test | [ |
| PiBA assay coupled to LAMP | Reagent cost for PiBA is a fraction of a cent. Overall cost reduction is ~10-fold respect to the reference (fluorescence reagents for qPCR) | [ |
| Smartphone-based analytical platform with homemade potentiostat | Based on CheapStat potentiostat which requires less than eighty dollars for its manufacturing, while the most commercial potentiostats cost a few thousands of dollars | [ |
| Smartphone spectrometer | Entire assembly along with the smartphone can be realized under $250, while reference spectrometer platforms costs are $4000 and $1200 | [ |
Figure 11Commercial products for mobile food diagnostics.