Traditional Chinese Medicine Prescription Generation Model Based on Search Enhancement

[Purposes] The generation of Traditional Chinese Medicine (TCM) prescription is one of the most challenging tasks in the research of intelligent TCM. Although there is a small part of research in this field, transfer learning methods are usually used to apply relevant technology of text generation t...

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Main Authors: ZHAO Zijuan, REN Xueting, SONG Kai, QIANG Yan, ZHAO Juanjuan, ZHANG Junlong
Format: Article
Language:English
Published: Editorial Office of Journal of Taiyuan University of Technology 2025-01-01
Series:Taiyuan Ligong Daxue xuebao
Subjects:
Online Access:https://tyutjournal.tyut.edu.cn/englishpaper/show-2371.html
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author ZHAO Zijuan
REN Xueting
SONG Kai
QIANG Yan
ZHAO Juanjuan
ZHANG Junlong
author_facet ZHAO Zijuan
REN Xueting
SONG Kai
QIANG Yan
ZHAO Juanjuan
ZHANG Junlong
author_sort ZHAO Zijuan
collection DOAJ
description [Purposes] The generation of Traditional Chinese Medicine (TCM) prescription is one of the most challenging tasks in the research of intelligent TCM. Although there is a small part of research in this field, transfer learning methods are usually used to apply relevant technology of text generation to this task simply and roughly. Either large number of standardized dataset is needed to train the model, or the domain knowledge and expertise of TCM are required. In order to solve these problems, a hybrid neural network architecture for TCM prescription generation—PreGenerator is proposed. With a novel hierarchical retrieval mechanism, the PreGenerator can automatically extract prescription and herbal templates to facilitate accurate clinical prescription generation. [Methods] First, PreGenerator uses the Symptom-Prescription Retrieval module to retrieve the most relevant prescriptions for a given patient’s symptoms. In order to follow the rule of compatibility of herbs, the Herb-Herb Retrieval module is introduced to retrieve the next most relevant herb according to the conditioned generated herbs. Finally, the prescription decoder fuses the symptom features, the retrieved prescription, and herbal template features to generate the most relevant and effective Chinese medicine prescription. [Findings] The validity of the model is verified by automatic evaluation and manual evaluation on the real medical case dataset. In addition, the proposed model can recommend herbs that do not appear on the prescription label but are useful for relieving symptoms, which shows that the model can learn some interactions between herbs and symptoms. This research also lays a foundation for the future research on intelligent query and prescription generation of TCM.
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publishDate 2025-01-01
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spelling doaj-art-f0cb1c67eefe4b6bbdb5baf00e01592a2025-02-12T03:34:22ZengEditorial Office of Journal of Taiyuan University of TechnologyTaiyuan Ligong Daxue xuebao1007-94322025-01-0156111412610.16355/j.tyut.1007-9432.202303551007-9432(2025)01-0114-13Traditional Chinese Medicine Prescription Generation Model Based on Search EnhancementZHAO Zijuan0REN Xueting1SONG Kai2QIANG Yan3ZHAO Juanjuan4ZHANG Junlong5College of Computer Science and Technology (Collge of Data Science), Taiyuan, Shanxi, ChinaCollege of Computer Science and Technology (Collge of Data Science), Taiyuan, Shanxi, ChinaCollege of Physics, Taiyuan University of Technology, Taiyuan, Shanxi, ChinaCollege of Computer Science and Technology (Collge of Data Science), Taiyuan, Shanxi, ChinaCollege of Computer Science and Technology (Collge of Data Science), Taiyuan, Shanxi, ChinaShanxi Medical University, Taiyuan, Shanxi, China[Purposes] The generation of Traditional Chinese Medicine (TCM) prescription is one of the most challenging tasks in the research of intelligent TCM. Although there is a small part of research in this field, transfer learning methods are usually used to apply relevant technology of text generation to this task simply and roughly. Either large number of standardized dataset is needed to train the model, or the domain knowledge and expertise of TCM are required. In order to solve these problems, a hybrid neural network architecture for TCM prescription generation—PreGenerator is proposed. With a novel hierarchical retrieval mechanism, the PreGenerator can automatically extract prescription and herbal templates to facilitate accurate clinical prescription generation. [Methods] First, PreGenerator uses the Symptom-Prescription Retrieval module to retrieve the most relevant prescriptions for a given patient’s symptoms. In order to follow the rule of compatibility of herbs, the Herb-Herb Retrieval module is introduced to retrieve the next most relevant herb according to the conditioned generated herbs. Finally, the prescription decoder fuses the symptom features, the retrieved prescription, and herbal template features to generate the most relevant and effective Chinese medicine prescription. [Findings] The validity of the model is verified by automatic evaluation and manual evaluation on the real medical case dataset. In addition, the proposed model can recommend herbs that do not appear on the prescription label but are useful for relieving symptoms, which shows that the model can learn some interactions between herbs and symptoms. This research also lays a foundation for the future research on intelligent query and prescription generation of TCM.https://tyutjournal.tyut.edu.cn/englishpaper/show-2371.htmlprescription generationintelligent chinese medicinetext generationherb retrievalmulti query attention
spellingShingle ZHAO Zijuan
REN Xueting
SONG Kai
QIANG Yan
ZHAO Juanjuan
ZHANG Junlong
Traditional Chinese Medicine Prescription Generation Model Based on Search Enhancement
Taiyuan Ligong Daxue xuebao
prescription generation
intelligent chinese medicine
text generation
herb retrieval
multi query attention
title Traditional Chinese Medicine Prescription Generation Model Based on Search Enhancement
title_full Traditional Chinese Medicine Prescription Generation Model Based on Search Enhancement
title_fullStr Traditional Chinese Medicine Prescription Generation Model Based on Search Enhancement
title_full_unstemmed Traditional Chinese Medicine Prescription Generation Model Based on Search Enhancement
title_short Traditional Chinese Medicine Prescription Generation Model Based on Search Enhancement
title_sort traditional chinese medicine prescription generation model based on search enhancement
topic prescription generation
intelligent chinese medicine
text generation
herb retrieval
multi query attention
url https://tyutjournal.tyut.edu.cn/englishpaper/show-2371.html
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AT renxueting traditionalchinesemedicineprescriptiongenerationmodelbasedonsearchenhancement
AT songkai traditionalchinesemedicineprescriptiongenerationmodelbasedonsearchenhancement
AT qiangyan traditionalchinesemedicineprescriptiongenerationmodelbasedonsearchenhancement
AT zhaojuanjuan traditionalchinesemedicineprescriptiongenerationmodelbasedonsearchenhancement
AT zhangjunlong traditionalchinesemedicineprescriptiongenerationmodelbasedonsearchenhancement