Predicting blood glucose level using salivary glucose and other associated factors: A machine learning model selection and evaluation study

Q1 Medicine
Aditi Chopra , Rohini R. Rao , Shobha U. Kamath , Sanjana Akhila Arun , Laasya Shettigar
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引用次数: 0

Abstract

Introduction

There is a need for designing non-invasive methods to predict blood glucose levels to ensure timely diagnosis of Diabetes Mellitus. Needle anxiety and bleeding disorders preclude many from undertaking blood tests.

Objectives

The primary objective of this study was to assess if biomarkers like saliva can be used to estimate blood glucose levels. The second objective was to develop and evaluate Machine Learning (ML) models to predict blood glucose levels based on salivary glucose and associated features. An insight into the patient's features, which was important for predicting blood glucose levels, was also required.

Methods

A cross-sectional study was conducted, and blood and saliva samples, along with patient-related data, were collected from healthy and diabetic patients. ML techniques were applied to the data to develop a tool for predicting blood glucose levels using patient features. The prediction intervals were computed, clinical accuracy was assessed, and important features for the prediction were identified.

Results

The Random Forest Regressor Model, with features identified using the wrapper method, was selected as the best, with an average RMSE of 43.28. The prediction intervals were computed for point estimate, MAE = 23.821, and coverage was 100 percent, the clinical accuracy was compared with that of glucometers and continuous monitoring systems. All predicted values are in Zones A and B of the Clarke error grid, and the bias was 6.41. The most important feature for predicting blood glucose level is salivary glucose level, followed by known risk factors like Family History, BMI, etc. The study found that salivary glucose levels are insufficient to classify blood glucose levels as high or normal.

Conclusion

The study concluded that salivary glucose with associated patient features could be a potential non-invasive biomarker for predicting blood glucose levels in patients. The developed ML model could be deployed in a device that inputs patient features, analyzes salivary glucose, and can monitor blood glucose levels in a non-invasive manner. Further research is needed to validate the findings of this study and develop a proof of concept.

利用唾液葡萄糖和其他相关因素预测血糖水平:机器学习模型选择与评估研究
导言:有必要设计非侵入性方法来预测血糖水平,以确保及时诊断糖尿病。本研究的主要目的是评估唾液等生物标志物是否可用于估测血糖水平。第二个目标是开发和评估基于唾液葡萄糖和相关特征预测血糖水平的机器学习(ML)模型。还需要深入了解患者的特征,这对预测血糖水平非常重要。方法进行了一项横断面研究,收集了健康和糖尿病患者的血液和唾液样本以及患者相关数据。对数据应用了 ML 技术,以开发一种利用患者特征预测血糖水平的工具。计算了预测区间,评估了临床准确性,并确定了预测的重要特征。结果使用包装方法确定特征的随机森林回归模型被选为最佳模型,平均 RMSE 为 43.28。计算了点估计的预测区间,MAE = 23.821,覆盖率为 100%,临床准确度与血糖仪和连续监测系统的准确度进行了比较。所有预测值均位于克拉克误差网格的 A 区和 B 区,偏差为 6.41。预测血糖水平最重要的特征是唾液葡萄糖水平,其次是已知的风险因素,如家族史、体重指数等。研究发现,唾液葡萄糖水平不足以将血糖水平划分为高或正常。所开发的 ML 模型可用于输入患者特征、分析唾液葡萄糖的设备中,并能以非侵入性方式监测血糖水平。还需要进一步的研究来验证本研究的结果和开发概念验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Informatics in Medicine Unlocked
Informatics in Medicine Unlocked Medicine-Health Informatics
CiteScore
9.50
自引率
0.00%
发文量
282
审稿时长
39 days
期刊介绍: Informatics in Medicine Unlocked (IMU) is an international gold open access journal covering a broad spectrum of topics within medical informatics, including (but not limited to) papers focusing on imaging, pathology, teledermatology, public health, ophthalmological, nursing and translational medicine informatics. The full papers that are published in the journal are accessible to all who visit the website.
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