| Literature DB >> 34976197 |
Salvatore Andrea Pullano1, Marta Greco1, Maria Giovanna Bianco1, Daniela Foti2, Antonio Brunetti1, Antonino S Fiorillo1.
Abstract
The demand of glucose monitoring devices and even of updated guidelines for the management of diabetic patients is dramatically increasing due to the progressive rise in the prevalence of diabetes mellitus and the need to prevent its complications. Even though the introduction of the first glucose sensor occurred decades ago, important advances both from the technological and clinical point of view have contributed to a substantial improvement in quality healthcare. This review aims to bring together purely technological and clinical aspects of interest in the field of glucose devices by proposing a roadmap in glucose monitoring and management of patients with diabetes. Also, it prospects other biological fluids to be examined as further options in diabetes care, and suggests, throughout the technology innovation process, future directions to improve the follow-up, treatment, and clinical outcomes of patients. © The author(s).Entities:
Keywords: assessment of glycemic control; biological fluids; diabetes technology; glucose sensors; point-of-care testing.
Mesh:
Substances:
Year: 2022 PMID: 34976197 PMCID: PMC8692922 DOI: 10.7150/thno.64035
Source DB: PubMed Journal: Theranostics ISSN: 1838-7640 Impact factor: 11.600
Figure 1Milestones in the development of actual glucose sensor systems technology. In the inset, available literature and estimated patents filed involving glucose sensors (1955-2020). Sourced from Scopus (blue) and Google (red).
Figure 2Error grid analysis proposed by Clarke et al., for clinical accuracy (A), and further modified by Parkes et al., for type 1 (B) and type 2 (C) diabetes. System bias plot (D), dashed black lines indicate the predetermined accuracy limits. FS represents the full-scale level for glucose concentration of the tested and reference sensor. Classically, it is set at 400 mg/dL (blood-based sensors).
Representative international standards for assessment of acceptable performance
| Regulatory Organism | Country | Device | Standard | Year | Ref. |
|---|---|---|---|---|---|
| Food and Drug Administration | USA | POCTs | FDA-2013-D-1445 | 2020 |
|
| Food and Drug Administration | USA | OTC BGMS | FDA-2013-D-1446 | 2020 |
|
| International Standard Organization | 165 countries | BGMS | ISO 15197 | 2015 | |
| Clinical and Laboratory Standards Institute | >50 countries | POCTs | POCT12-A3 | 2018 |
|
POCT, point-of-care test; OCT, over-the-counter; BGMS, blood glucose monitoring test systems; FDA, food and drug administration; ISO, international standard organization.
Figure 3(A) Schematic classification of the glucose biosensors evolution distinguished into generations according to the sensing mechanism. (B) Representative enzyme immobilization techniques: i, adsorption; ii, covalent bonding; iii, cross-linking; iv, entrapment. (C) Schematic representation of a characteristic direct electro-oxidation of glucose in non-enzymatic glucose sensors and the most investigated materials used as catalyst.
Classification of enzymatic glucose sensors
| Classification | Characteristics |
|---|---|
| 1st Generation | Based on the sensor designed by Clark and Lyons |
| 2nd Generation | Replacement of oxygen as an electron acceptor |
| 3rd Generation | Absence of mediator |
Representative substrate enzyme immobilization method
| Substrate | Enzyme | Immobilization |
|---|---|---|
| Au/Ag-NCs | GOx | Trapping |
| ITO/ Chitosan-Polypyrrole Au-NPs | GOx | Trapping |
| Ag/CNT/Chitosan | GOx | Layer technique |
| BDD/Graphene/ Pt-NPs | GOx | Absorption |
| Si/ VACNF | GOx | Absorption |
| Graphite NPs | GOx | Covalent bond |
NC, nano cube; ITO, indium tin oxide; NP, nano particle; CNT, carbon nano tube;
BDD, boron-doped diamond; VACNF, vertically aligned carbon nanofiber.
Figure 4Main biofluids and technologies investigated for glucose monitoring, which include: (A) the gold standard venous blood and the widespread used peripheral blood for auto-monitoring; (B) ISF; (C) sweat; (D), saliva; (E) tears; (F) urine.
Representative commercial and non-commercial glucose sensor for laboratory settings and SMBG
| Manufacturer | Sample | Type | Sensor material | Method | Sensitivity | Linear Range | LOD |
|---|---|---|---|---|---|---|---|
| Commercial | |||||||
| Roche Cobas | S, P, U, CSF | Enzymatic | - | Photometric | 1.003§ | 2-750 | 2 |
| Roche Accu-check | PB | Enzymatic (GDH/FAD) | Palladium | Electrochemical | 0.127 μA/mM | 10-600 | 10 |
| Non-Commercial | |||||||
| Yang et al. | Glc/NaOH* | Non-enzymatic | PDDA-graphene/CuO | Amperometric | 4982.2 μA mM-1cm-2 | 0.072-72 | 0.004 |
| Zang et al. | WB | GOx/HRP | TMB/GOx/HRP bi-enzymatic | Photometric | 1.1 (a.u.)/(mg/dL) | 49-284 | 5 |
| Màrquez et al. | WB | Enzymatic (GOx/HRP) | Calcium alginate hydrogel | Amperometric | 0.27 μA mM-1cm-2 | 36-218 | 0.007 |
S, serum; P, plasma; U, urine; CSF, cerebrospinal fluid; PB, peripheral blood; WB, whole blood; LOD, limit of detection; PDDA, poly-dimethyl diallyl ammonium chloride; TMB, 3,3', 5,5' tetramethylbenzidine dihydrochloride; HRP, horseradish peroxidase. §angular coefficient provided by the linear regression (calibration curve y = 18.07·x-0.11 mg/dL). *Glucose in alkaline solution.
Main technologies and characteristics of the glucose evaluation in ISF
| Technologies | Type | Advantages | Disadvantages | Measurement site | Performance | Ref. |
|---|---|---|---|---|---|---|
| Electrical | Impedance | It can measure glucose levels in the vascular compartment, so no time lag in sensor response | Temperature and diseases affecting skin may affect measurements | Skin, wrist | Sens: 0.02-0.05 Ω/(mg/dL) | |
| Optical | Raman | Non-invasive | Weak Raman signal | Wrist, finger, aqueous humor | ||
| Optical | OCT | Real time monitoring | sensitive to motion artifacts | Forearm | Sens. 0.015-0.045 a.u./(mg/dL) | |
| Optical/Mechanical | Photoacoustic | It is not affected by ionic strength. | Problem of scattering in the tissues | Aqueous humor, finger and forearm | Sens. 0.035-0.098 | |
| Optical | Fluorescence | No damage to the body | Scattering phenomena | Skin | Range: up to 454 mg/dL |
|
| Optical | NIR | Skin penetration up to 1-100 mm | Poor signal to noise ratio | Tongue, oral mucosa, lip, ear lobe, finger, forearm, cheek. | Range:30-300 mg/dL and up to 600 mg/dL | |
| Electrochemical | Iontophoresis | No mechanical hardware | Filtered ISF and thus more similar to sweat or saliva | Skin, wrist, forearm |
| |
| Microwave | No-ISF extraction is required | Lower precision | Skin | Range: 36-454 mg/dL |
|
Representative characteristics of non-commercial sweat-based glucose sensors
| Manufacturer | Type | Sensor material | Configuration | Sensitivity | Linear range | LOD | |
|---|---|---|---|---|---|---|---|
| Lee et al. | GOx | Au/Nafion/Glutaraldehyde | Amperometric | 28 μA mM-1cm-2 | 0-18 | 0.2 | |
| Gao et al. | GOx | Chitosan/CNT /Prussian blue/Au | Amperometric | 2.35 nA μM-1 | 0-3.6 | - | |
| Saraoğlu et al. | Non-enzymatic | Thin film | Capacitive- ANN | - | 83-116.5 | - | |
| Lu et al. | Non-enzymatic | Chitosan/NiCo2O4/Au | Amperometric | 0.5 μA μM-1 | 0.2-4 | 0.2 | |
Representative commercial and non-commercial characteristics of saliva-based glucose sensors
| Manufacturer | Type | Sensor material | Configuration | Sensitivity | Linear Range | LOD | |
|---|---|---|---|---|---|---|---|
| Commercial | |||||||
| The IQ Global Group | GOx | Organic Transistor | Amperometric | - | 3.6-545 | - | |
| Non-commercial | |||||||
| Macaya et al. | GOx | Pt/PEDOT:PSS | Resistive | 0.1 R/R0/(mg/dL) | 0.02-545 | 0.02 | |
| Chakraborty et al. | Non-enzymatic | porous CuO | Amperometric | ∼2299 μAmM-1 cm-2 | 0.09-4 | 0.008 | |
| Liu et al. | GOx/HRP | MWCNT | Amperometric | 67.93 nAmM-1 | 0.9-27 | 0.005 | |
P3HT, poly(3-hexylthiophene); R/R0, relative resistance variation; PEDOT:PSS, poly(3,4-ethylenedioxythiophene) polystyrene sulfonate; MWCNT, multi-walled carbon nanotube.
Representative commercial and non-commercial characteristics of tears-based glucose sensors
| Manufacturer | Type | Sensor material | Configuration | Sensitivity | Linear Range | LOD |
|---|---|---|---|---|---|---|
| Commercial | ||||||
| Roche - ACCU-CHEK Aviva Plus | PQQ-GDH | nitrosoaniline-derivative | Amperometric | 0.127 μAmM-1 | 0.009-2.67 | 0.016 |
| Non-Commercial | ||||||
| Kownacka et al. | GOx | Pt/Ir | Amperometric | - | 1.8-18 | - |
| Kim et al. | Non-enzymatic | Nanoparticle Embedded Contact Lens | Photometric | 0.089Δr'n/mM | 0-44 | - |
| Romeo et al. | Non-enzymatic | PET/Au/CuO/Nafion | Amperometric | 850 μAmM-1 cm-2 | 0.055-12.6 | 0.05 |
PQQ-GDH, pyrroloquinoline quinone dehydrogenase; PET, polyethylene terephthalate; Δr'n, difference of relative reflectance before and after reaction with glucose.
Representative commercial and non-commercial characteristics of urine-based glucose sensors
| Manufacturer | Type | Sensor material | Configuration | Sensitivity | Range | LOD |
|---|---|---|---|---|---|---|
| Commercial | ||||||
| Sysmex, UC‐11A test strips | GOx | - | Colorimetric (Semiquantitative) | - | 50-2000 | 50 |
| Non-Commercial | ||||||
| Kong et al. | SERS | Metal carbonyl compounds | Raman responses | 1800-2200 cm-1 | 1.8-180 | 1.8 |
| Lee et al. | GOx | Paper/ PAni-NPs/RBCM | Colorimetric | 0.2562 λ/(μg/mL) | 0-1018 | 10 |
| Janyasupab et al. | Non-enzymatic | CoFe/NG | Amperometric | 45.36 μAmM-1 cm-2 | 5-55 | ∼4 |
| Sun et al. | Non-enzymatic | Cu-MOF | Amperometric | 89 μAmM-1 cm-2 | 0.001-90 | 0.2·10-3 |
SERS, surface-enhanced Raman scattering; PAni-NPs, polyaniline-nanoparticles; RBCM, red blood cell membrane; NG, nitrogen-doped graphene; MOF, metal-organic framework. λ, absorbance at 563 nm.
Figure 5Roadmap for the management of diabetes mellitus. Summarized steps for the treatment and follow-up of type 1, type 2 and gestational diabetes are indicated. SGLT2, sodium glucose cotransporter 2; GLP-1RAs, glucagone-like peptide-1 receptor agonists; DPP-4i, dipeptydil peptidase-4 inhibitors; HbA1c, hemoglobin A1c; SGM, self glucose monitoring; CGM, continuous glucose monitoring; ASCVD, atherosclerotic cardiovascular disease; DKD, diabetic kidney disease.
Figure 6Schematic representation of current and future monitoring of glycemic control in type 1, type 2 and gestational diabetes. In green, blood is used for the detection of glucose and other markers of glycemic control. In orange, non-invasive biological fluids for glucose detection. Currently, the only approved FDA non-invasive methods for glucose detection employ ISF. Multiplex invasive or non-invasive assays may be foreseen in the future to integrate glucose measurement in the follow-up of patients with diabetes, elderly type 2 diabetes, and prediabetes, as well as to support diabetes related research.