Non-Invasive Diagnostic Approach for Diabetes Using Pulse Wave Analysis and Deep Learning

Hiruni Gunathilaka, Rumesh Rajapaksha, Thosini Kumarika, Dinusha Perera, Uditha Herath, Charith Jayathilaka, Janitha Liyanage, Sudath Kalingamudali
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Abstract

The surging prevalence of diabetes globally necessitates advancements in non-invasive diagnostics, particularly for the early detection of cardiovascular anomalies associated with the condition. This study explores the efficacy of Pulse Wave Analysis (PWA) for distinguishing diabetic from non-diabetic individuals through morphological examination of pressure pulse waveforms. The research unfolds in four phases: data accrual, preprocessing, Convolutional Neural Network (CNN) model construction, and performance evaluation. Data were procured using a multipara patient monitor, resulting in 2000 pulse waves equally divided between healthy individuals and those with diabetes. These were used to train, validate, and test three distinct CNN architectures: the conventional CNN, Visual Geometry Group (VGG16), and Residual Networks (ResNet18). The accuracy, precision, recall, and F1 score gauged each model’s proficiency. The CNN demonstrated a training accuracy of 82.09% and a testing accuracy of 80.6%. The VGG16, with its deeper structure, surpassed the baseline with training and testing accuracies of 90.2% and 86.57%, respectively. ResNet18 excelled, achieving a training accuracy of 92.50% and a testing accuracy of 92.00%, indicating its robustness in pattern recognition within pulse wave data. Deploying deep learning for diabetes screening marks progress, suggesting clinical use and future studies on bigger datasets for refinement.
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利用脉搏波分析和深度学习的无创糖尿病诊断方法
全球糖尿病发病率的激增要求无创诊断技术的进步,尤其是在早期发现与糖尿病相关的心血管异常方面。本研究通过对压力脉搏波形进行形态学检查,探索脉搏波分析法(PWA)在区分糖尿病患者和非糖尿病患者方面的功效。研究分四个阶段展开:数据积累、预处理、卷积神经网络(CNN)模型构建和性能评估。研究人员使用一个多产妇监护仪采集数据,获得了 2000 个脉搏波,健康人和糖尿病人各占一半。这些数据用于训练、验证和测试三种不同的 CNN 架构:传统 CNN、视觉几何组 (VGG16) 和残差网络 (ResNet18)。准确率、精确度、召回率和 F1 分数衡量了每个模型的能力。CNN 的训练准确率为 82.09%,测试准确率为 80.6%。具有更深结构的 VGG16 超越了基线,其训练和测试准确率分别为 90.2% 和 86.57%。ResNet18 表现出色,训练准确率达到 92.50%,测试准确率达到 92.00%,这表明它在脉搏波数据模式识别方面具有很强的鲁棒性。将深度学习应用于糖尿病筛查标志着一种进步,建议临床使用,并建议未来在更大的数据集上进行研究,以进行改进。
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