预测骨质疏松治疗依从性的机器学习方法

Ggaliwango Marvin, Md. Golam Rabiul Alam
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引用次数: 2

摘要

骨质疏松症是一种严重的残疾负担,预计到2025年费用将增加近50%。由于其长期治疗,50-70%的患者在开始治疗的第一年就退出了骨质疏松药物治疗。这就迫切需要改善骨质疏松症和药物管理工具,特别是对孕妇、绝经后妇女和老年人,以确保患者在治疗期间的治疗依从性。在本文中,我们开发并测试了用于预测患者治疗依从性的机器学习模型的准确性,以使卫生专业人员能够兼容地决定骨质疏松症治疗和患者药物管理的治疗方法和方法。我们是第一个开发和测试机器学习模型来预测治疗依从性治疗的公司。ML模型的准确度结果被总结为经典指标,其中ExtraTree模型在使用合成少数派过采样技术支持向量机器学习(SMOTE-SVM)的训练、测试和整体数据集上分别表现出100%、85.0%和94.5%的最高准确度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Approach for Predicting Therapeutic Adherence to Osteoporosis Treatment
Osteoporosis is a great disability burden with an expected cost increase of almost 50% by 2025. Due to its long term treatment, 50–70% of the patients withdraw from their osteoporosis medications within the first year of initiation. This necessitates an urgent need for improved osteoporosis and pharmacologic management tools most especially for pregnant women, postmenopausal women and the elderly to ensure therapeutic adherence of the patients during treatment. In this paper, we developed and tested accuracy of Machine Learning Models for predicting therapeutic adherence of patients to enable health professionals to compatibly decide on the therapeutic treatments and approaches for osteoporosis treatment and pharmacologic management of their patients. We were the first to develop and test Machine Learning Models for Predicting Therapeutic Adherence treatments. The ML Model accuracy results are summarized as classical metrics where the ExtraTree Model exhibited the highest accuracy of 100%, 85.0%, 94.5% on the training, testing and overall dataset respectively using Synthetic Minority Over-sampling Technique Support Vector Machine Learning (SMOTE-SVM).
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