基于高效鸡尾学习的体质计算机辅助预测

Guang Shi, Yirong Kan, Renyuan Zhang
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摘要

本文采用中医中广泛使用的多种高效机器学习算法对身体体质(BC)问卷的临床数据进行分析。本研究旨在从生活方式上对公元前人进行精确的分类;提供生活方式的健康指导,使所谓“有偏见”的卑诗人恢复到被称为“温和卑诗人”的健康状态。生活方式的关键特征是通过机器学习(ML)识别的。然而,用于此类应用的传统唯一ML算法,称为随机森林(RF),偏最小二乘法(PLS)或最小绝对收缩和选择算子(LASSO)几乎不能提供一小组重要的生活方式特征。本文开发了一种特殊的LASSO学习技术方案,用于识别合理少的医学特征,同时提高诊断准确率。通过将每个“有偏见的”BC与温和的BC配对,分类任务是用简化的特征进行的。与联邦学习过程类似,对多个算法之间的共同特征进行了细化。从实际临床数据验证来看,BC分类准确率为94.6%,比目前最先进的(SOTA)分类准确率提高了24.7%;平均关键特征减少到17,SOTA的最佳努力是31。最后,总结了多种算法的共性关键特征。
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Computer-Aided-Prediction of Body Constitution with Efficient Cock-Tail Learning
In this paper, the clinical data thru the questionnaire of body constitution (BC) is analyzed by multiple efficient machine learning algorithms for wide use in traditional Chinese medicine (TCM). This research aims at precisely categorizing the BCs from the life-style; offering the health guidance on the life-styles for recovering the so-called "biased" BCs to the healthy status known as the "Gentle BC". The key features of life-style are identified by machine learning (ML). However, the conventional sole ML algorithm for such application, known as random forest (RF), partial least squares (PLS), or least absolute shrinkage and selection operator (LASSO) hardly offers a small set of significant life-style features. In this work, a special scheme of LASSO learning technology is developed for identifying the reasonably few medical features and improve the diagnosis accuracy simultaneously. By pairing each "biased" BC against the gentle BC, the categorization task is conducted with reduced features. Similarly to the federated learning process, the common features among multiple algorithms are refined. From the real clinical data validation, the BC categorization accuracy is 94.6% which is 24.7% higher than the state-of-the-art (SOTA) works; the average key features are reduced to 17 where the best effort of SOTA is 31. Finally, the common key features are summarized among multiple algorithms.
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