PrescDRL:用于慢性病治疗中草药处方规划的深度强化学习。

IF 5.3 3区 医学 Q1 INTEGRATIVE & COMPLEMENTARY MEDICINE
Kuo Yang, Zecong Yu, Xin Su, Fengjin Zhang, Xiong He, Ning Wang, Qiguang Zheng, Feidie Yu, Tiancai Wen, Xuezhong Zhou
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引用次数: 0

摘要

慢性病的治疗规划是医学人工智能的一项重要任务,尤其是在传统中医领域。然而,为不同临床情况下的慢性病患者生成优化的序贯治疗策略仍是一个具有挑战性的问题,需要进一步探索。在这项研究中,我们提出了一个基于深度强化学习的慢性病治疗中药处方规划框架(PrescDRL)。PrescDRL 是一种顺序中药处方优化模型,它关注长期疗效,而不是在每一步都获得最大回报,从而确保患者获得更好的治疗效果。我们构建了一个高质量的糖尿病序贯诊断和治疗基准数据集,并根据该基准对 PrescDRL 进行了评估。结果表明,PrescDRL 取得了更高的疗效,与医生相比,单步奖励分别提高了 117% 和 153%。此外,PrescDRL 在处方预测方面的表现优于基准,精确度提高了 40.5%,召回率提高了 63%。总之,我们的研究证明了利用人工智能改善中医临床智能诊断和治疗的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PrescDRL: deep reinforcement learning for herbal prescription planning in treatment of chronic diseases.

Treatment planning for chronic diseases is a critical task in medical artificial intelligence, particularly in traditional Chinese medicine (TCM). However, generating optimized sequential treatment strategies for patients with chronic diseases in different clinical encounters remains a challenging issue that requires further exploration. In this study, we proposed a TCM herbal prescription planning framework based on deep reinforcement learning for chronic disease treatment (PrescDRL). PrescDRL is a sequential herbal prescription optimization model that focuses on long-term effectiveness rather than achieving maximum reward at every step, thereby ensuring better patient outcomes. We constructed a high-quality benchmark dataset for sequential diagnosis and treatment of diabetes and evaluated PrescDRL against this benchmark. Our results showed that PrescDRL achieved a higher curative effect, with the single-step reward improving by 117% and 153% compared to doctors. Furthermore, PrescDRL outperformed the benchmark in prescription prediction, with precision improving by 40.5% and recall improving by 63%. Overall, our study demonstrates the potential of using artificial intelligence to improve clinical intelligent diagnosis and treatment in TCM.

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来源期刊
Chinese Medicine
Chinese Medicine INTEGRATIVE & COMPLEMENTARY MEDICINE-PHARMACOLOGY & PHARMACY
CiteScore
7.90
自引率
4.10%
发文量
133
审稿时长
31 weeks
期刊介绍: Chinese Medicine is an open access, online journal publishing evidence-based, scientifically justified, and ethical research into all aspects of Chinese medicine. Areas of interest include recent advances in herbal medicine, clinical nutrition, clinical diagnosis, acupuncture, pharmaceutics, biomedical sciences, epidemiology, education, informatics, sociology, and psychology that are relevant and significant to Chinese medicine. Examples of research approaches include biomedical experimentation, high-throughput technology, clinical trials, systematic reviews, meta-analysis, sampled surveys, simulation, data curation, statistics, omics, translational medicine, and integrative methodologies. Chinese Medicine is a credible channel to communicate unbiased scientific data, information, and knowledge in Chinese medicine among researchers, clinicians, academics, and students in Chinese medicine and other scientific disciplines of medicine.
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