Treffer: RECOMED: A comprehensive pharmaceutical recommendation system.

Title:
RECOMED: A comprehensive pharmaceutical recommendation system.
Authors:
Zomorodi M; Department of Computer Science, Faculty of Computer Science and Telecommunications, Cracow University of Technology, Krakow, Poland. Electronic address: zomorodi@pk.edu.pl., Ghodsollahee I; Department of Computer Engineering, Ferdowsi University of Mashhad, Iran., Martin JH; NHMRC Centre for Research Excellence in Digestive Health, Hunter Medical Research Institute (HMRI), The University of Newcastle, Callaghan, New South Wales, Australia., Talley NJ; NHMRC Centre for Research Excellence in Digestive Health, Hunter Medical Research Institute (HMRI), The University of Newcastle, Callaghan, New South Wales, Australia., Salari V; Institute for Quantum Science and Technology, Department of Physics and Astronomy, University of Calgary, Alberta, Canada., Pławiak P; Department of Computer Science, Faculty of Computer Science and Telecommunications, Cracow University of Technology, Krakow, Poland; Institute of Theoretical and Applied Informatics, Polish Academy of Sciences, Gliwice, Poland., Rahimi K; Deep Medicine, Nuffield Department of Women's and Reproductive Health, University of Oxford, Oxford, United Kingdom., Acharya UR; School of Mathematics, Physics and Computing, University of Southern Queensland, Toowoomba, QLD, Australia.
Source:
Artificial intelligence in medicine [Artif Intell Med] 2024 Nov; Vol. 157, pp. 102981. Date of Electronic Publication: 2024 Sep 12.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Elsevier Science Publishing Country of Publication: Netherlands NLM ID: 8915031 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1873-2860 (Electronic) Linking ISSN: 09333657 NLM ISO Abbreviation: Artif Intell Med Subsets: MEDLINE
Imprint Name(s):
Publication: Amsterdam : Elsevier Science Publishing
Original Publication: Tecklenburg, Federal Republic of Germany : Burgverlag, c1989-
Contributed Indexing:
Keywords: Drug information extraction; Drug recommendation system; Hybrid recommendation method; Recommendation system
Entry Date(s):
Date Created: 20240922 Date Completed: 20241112 Latest Revision: 20250805
Update Code:
20250805
DOI:
10.1016/j.artmed.2024.102981
PMID:
39306906
Database:
MEDLINE

Weitere Informationen

Objectives: To build datasets containing useful information from drug databases and recommend a list of drugs to physicians and patients with high accuracy by considering a wide range of features of people, diseases, and chemicals.
Methods: A comprehensive pharmaceutical recommendation system was designed based on the features of people, diseases, and medicines extracted from two major drug databases and the created datasets of patients and drug information. Then, the recommendation was given based on recommender system algorithms using patient and caregiver ratings and the knowledge obtained from drug specifications and interactions. Sentiment analysis was employed by natural language processing approaches in pre-processing, along with neural network-based methods and recommender system algorithms for modelling the system. Patient conditions and medicine features were used to make two models based on matrix factorization. Then, we used drug interaction criteria to filter drugs with severe or mild interactions with other drugs. We developed a deep learning model for recommending drugs using data from 2304 patients as a training set and 660 patients as our validation set. We used knowledge from drug information and combined the model's outcome into a knowledge-based system with the rules obtained from constraints on taking medicine.
Results: Our recommendation system can recommend an acceptable combination of medicines similar to the existing prescriptions available in real life. Compared with conventional matrix factorization, our proposed model improves the accuracy, sensitivity, and hit rate by 26 %, 34 %, and 40 %, respectively. In addition, it improves the accuracy, sensitivity, and hit rate by an average of 31 %, 29 %, and 28 % compared to other machine learning methods. We have open-sourced our implementation in Python.
Conclusion: Compared to conventional machine learning approaches, we obtained average accuracy, sensitivity, and hit rates of 31 %, 29 %, and 28 %, respectively. Compared to conventional matrix factorisation our proposed method improved the accuracy, sensitivity, and hit rate by 26 %, 34 %, and 40 %, respectively. However, it is acknowledged that this is not the same as clinical accuracy or sensitivity, and more accurate results can be obtained by gathering larger datasets.
(Copyright © 2024 Elsevier B.V. All rights reserved.)

Declaration of competing interest The authors declare that there is no conflict of interest regarding the publication of this article. Submitting authors are responsible for coauthors declaring their interests.