DeepMedFeature: An Accurate Feature Extraction and Drug-Drug Interaction Model for Clinical Text in Medical Informatics

Author:

Malik M. Shoaib1,Jawad Sara2,Moqurrab Syed Atif3,Srivastava Gautam4

Affiliation:

1. Department of Computer Science, Faculty of Computing, Capital University of Science and Technology, Islamabad, Pakistan

2. Department of Computer Science, Air University, Islamabad, Pakistan

3. School of Computing Gachon University, Seongnam, Korea

4. Dept. of Math and Computer Science Brandon University, Brandon, Canada and Research Centre for Interneural Computing China Medical University, Taichung, Taiwan and Dept. of Computer Science and Math Lebanese American University, Beirut, Lebanon

Abstract

Drug-drug interactions (DDIs) are an important biological phenomenon which can result in medical errors from medical practitioners. Drug interactions can change the molecular structure of interacting agents which may prove to be fatal in the worst case. Finding drug interactions early in diagnosis can be pivotal in side-effect prevention. The growth of big data provides a rich source of information for clinical studies to investigate DDIs. We propose a hierarchical classification model which is double-pass in nature. The first pass predicts the occurrence of an interaction and then the second pass further predicts the type of interaction such as effect, advice, mechanism, and int. We applied different deep learning algorithms with Convolutional Bi-LSTM (ConvBLSTM) proving to be the best. The results show that pre-trained vector embeddings prove to be the most appropriate features. The F1-score of the ConvBLSTM algorithm turned out to be 96.39% and 98.37% in Russian and English language respectively which is greater than the state-of-the-art systems. According to the results, it can be concluded that adding a convolution layer before the bi-directional pass improves model performance in the automatic classification and extraction of drug interactions, using pre-trained vector embeddings such as Fasttext and Bio-Bert.

Publisher

Association for Computing Machinery (ACM)

Reference30 articles.

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2. Safety and Tolerability of Whole Soybean Products: A Dose-Escalating Clinical Trial in Older Adults with Obesity;Rebello J;Nutrients,2023

3. Zhao Xiaoyan Deng Yang Yang Min Wang Lingzhi Zhang Rui Cheng Hong Lam Wai Shen Ying and Xu Ruifeng. 2023. A Comprehensive Survey on Deep Learning for Relation Extraction: Recent Advances and New Frontiers. arXiv preprint arXiv:2306.02051(2023).

4. Isabel Segura-Bedmar, Paloma Martínez Fernández, and María Herrero Zazo. 2013. Semeval-2013 task 9: Extraction of drug-drug interactions from biomedical texts (ddiextraction 2013). Association for Computational Linguistics.

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