Predicting Case Fatality of Dengue Epidemic: Statistical Machine Learning Towards a Virtual Doctor

S. Chattopadhyay, A. Chattopadhyay, E. Aifantis
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引用次数: 3

Abstract

Dengue fever is a self-limiting communicable viral disease, transmitted through mosquito bites. Its Case Fatality Grade (CFG) varies across population due to variations in viral load, immunity of the patient, early diagnosis, and availability of high-end treatment facility. This study describes an initial effort to automate the process of Dengue CFG predictions. Two established Statistical Machine Learning (SML) algorithms, Multiple Linear Regressions (MLR) and Multinomial Logistic Regressions (MnLR), are combined to substitute the existing Deep Learning methods for clinical decision making. We consider a vector of eleven sign-symptoms (independent variables), each weighted between [0,1] on a 3-point scale - ‘Mild’ (CFG<=0.33), ‘Moderate’ (0.330.66). Results show that both classifiers are effective in early screening with similar accuracy levels (68% for MLR versus 72% for MnLR) although precision levels are far superior with MnLR (88%) than MLR (61%). This study is a futuristic step towards Machine Learning (ML) aided clinical diagnostic paradigms, as an alternative to computationally intensive Artificial Intelligence.
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预测登革热病死率:面向虚拟医生的统计机器学习
登革热是一种自限性传染性病毒性疾病,通过蚊虫叮咬传播。由于病毒载量、患者免疫力、早期诊断和高端治疗设施的可用性不同,其病死率等级(CFG)因人群而异。本研究描述了自动化登革热CFG预测过程的初步努力。两种已建立的统计机器学习(SML)算法,多元线性回归(MLR)和多项逻辑回归(MnLR)相结合,以取代现有的深度学习方法进行临床决策。我们考虑一个由11个症状(自变量)组成的向量,每个症状的权重在[0,1]之间(3分制)——“轻度”(CFG<=0.33),“中度”(0.330.66)。结果表明,两种分类器在早期筛查中都是有效的,准确率水平相似(MLR为68%,MnLR为72%),尽管MnLR的准确率水平远高于MLR(88%)。这项研究是机器学习(ML)辅助临床诊断范式的未来一步,作为计算密集型人工智能的替代方案。
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