Use of Raman spectroscopy to screen diabetes mellitus with machine learning tools

被引:80
|
作者
Guevara, Edgar [1 ,2 ,3 ]
Carlos Torres-Galvan, Juan [2 ,3 ]
Ramirez-Elias, Miguel G. [4 ]
Luevano-Contreras, Claudia [5 ]
Javier Gonzalez, Francisco [2 ,3 ]
机构
[1] CONACYT Univ Autonoma San Luis Potosi, San Luis Potosi, Slp, Mexico
[2] Univ Autonoma San Luis Potosi, Terahertz Sci & Technol Ctr C2T2, San Luis Potosi, Slp, Mexico
[3] Univ Autonoma San Luis Potosi, Sci & Technol Natl Lab LANCyTT, San Luis Potosi, Slp, Mexico
[4] Univ Autonoma San Luis Potosi, Fac Ciencias, San Luis Potosi, Slp, Mexico
[5] Univ Guanajuato, Dept Med Sci, Leon, Mexico
来源
BIOMEDICAL OPTICS EXPRESS | 2018年 / 9卷 / 10期
关键词
ADVANCED GLYCATION; GLUCOSE; PREDICTION; DIAGNOSIS;
D O I
10.1364/BOE.9.004998
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Type 2 diabetes mellitus (DM2) is one of the most widely prevalent diseases worldwide and is currently screened by invasive techniques based on enzymatic assays that measure plasma glucose concentration in a laboratory setting. A promising plan of action for screening DM2 is to identify molecular signatures in a non-invasive fashion. This work describes the application of portable Raman spectroscopy coupled with several supervised machine-learning techniques, to discern between diabetic patients and healthy controls (Ctrl), with a high degree of accuracy. Using artificial neural networks (ANN), we accurately discriminated between DM2 and Ctrl groups with 88.9-90.9% accuracy, depending on the sampling site. In order to compare the ANN performance to more traditional methods used in spectroscopy, principal component analysis (PCA) was carried out. A subset of features from PCA was used to generate a support vector machine (SVM) model, albeit with decreased accuracy (76.0-82.5%). The 10-fold cross-validation model was performed to validate both classifiers. This technique is relatively low-cost, harmless, simple and comfortable for the patient, yielding rapid diagnosis. Furthermore, the performance of the ANN-based method was better than the typical performance of the invasive measurement of capillary blood glucose. These characteristics make our method a promising screening tool for identifying DM2 in a non-invasive and automated fashion. (C) 2018 Optical Society of America under the terms of the OSA Open Access Publishing Agreement
引用
收藏
页码:4998 / 5010
页数:13
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