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author:

Tan, Yanchao (Tan, Yanchao.) [1] | Kong, Chengjun (Kong, Chengjun.) [2] | Yu, Leisheng (Yu, Leisheng.) [3] | Li, Pan (Li, Pan.) [4] | Chen, Chaochao (Chen, Chaochao.) [5] | Zheng, Xiaolin (Zheng, Xiaolin.) [6] | Hertzberg, Vicki S. (Hertzberg, Vicki S..) [7] | Yang, Carl (Yang, Carl.) [8]

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EI Scopus

Abstract:

Drug recommendation is an important task of AI for healthcare. To recommend proper drugs, existing methods rely on various clinical records (e.g., diagnosis and procedures), which are commonly found in data such as electronic health records (EHRs). However, detailed records as such are often not available and the inputs might merely include a set of symptoms provided by doctors. Moreover, existing drug recommender systems usually treat drugs as individual items, ignoring the unique requirements that drug recommendation has to be done on a set of items (drugs), which should be as small as possible and safe without harmful drug-drug interactions (DDIs). To deal with the challenges above, in this paper, we propose a novel framework of Symptom-based Set-to-set Small and Safe drug recommendation (4SDrug). To enable set-to-set comparison, we design set-oriented representation and similarity measurement for both symptoms and drugs. Further, towards the symptom sets, we devise importance-based set aggregation to enhance the accuracy of symptom set representation; towards the drug sets, we devise intersection-based set augmentation to ensure smaller drug sets, and apply knowledge-based and data-driven penalties to ensure safer drug sets. Extensive experiments on two real-world EHR datasets, i.e., the public benchmark one of MIMIC-III and the industrial large-scale one of NELL, show drastic performance gains brought by 4SDrug, which outperforms all baselines in most effectiveness measures, while yielding the smallest sets of recommended drugs and 26.83% DDI rate reduction from the ground-truth data. © 2022 ACM.

Keyword:

Benchmarking Drug interactions Knowledge based systems Large dataset

Community:

  • [ 1 ] [Tan, Yanchao]Fuzhou University, College of Computer and Data Science, Fuzhou, China
  • [ 2 ] [Kong, Chengjun]National University of Singapore, Faculty of Science, Singapore
  • [ 3 ] [Yu, Leisheng]Emory University, Department of Computer Science, Atlanta; GA, United States
  • [ 4 ] [Li, Pan]Purdue University, Department of Computer Science, West Lafayette; IN, United States
  • [ 5 ] [Chen, Chaochao]Zhejiang University, College of Computer Science, Hangzhou, China
  • [ 6 ] [Zheng, Xiaolin]Zhejiang University, College of Computer Science, Hangzhou, China
  • [ 7 ] [Hertzberg, Vicki S.]Emory University, Nell Hodgson Woodruff School of Nursing, Atlanta; GA, United States
  • [ 8 ] [Yang, Carl]Emory University, Department of Computer Science, Atlanta; GA, United States

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Year: 2022

Page: 3970-3980

Language: English

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ESI Highly Cited Papers on the List: 0 Unfold All

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30 Days PV: 0

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