Abstract

BackgroundSemantic categorization analysis of clinical trials eligibility criteria based on natural language processing technology is crucial for the task of optimizing clinical trials design and building automated patient recruitment system. However, most of related researches focused on English eligibility criteria, and to the best of our knowledge, there are no researches studied the Chinese eligibility criteria. Thus in this study, we aimed to explore the semantic categories of Chinese eligibility criteria.MethodsWe downloaded the clinical trials registration files from the website of Chinese Clinical Trial Registry (ChiCTR) and extracted both the Chinese eligibility criteria and corresponding English eligibility criteria. We represented the criteria sentences based on the Unified Medical Language System semantic types and conducted the hierarchical clustering algorithm for the induction of semantic categories. Furthermore, in order to explore the classification performance of Chinese eligibility criteria with our developed semantic categories, we implemented multiple classification algorithms, include four baseline machine learning algorithms (LR, NB, kNN, SVM), three deep learning algorithms (CNN, RNN, FastText) and two pre-trained language models (BERT, ERNIE).ResultsWe totally developed 44 types of semantic categories, summarized 8 topic groups, and investigated the average incidence and prevalence in 272 hepatocellular carcinoma related Chinese clinical trials. Compared with the previous proposed categories in English eligibility criteria, 13 novel categories are identified in Chinese eligibility criteria. The classification result shows that most of semantic categories performed quite well, the pre-trained language model ERNIE achieved best performance with macro-average F1 score of 0.7980 and micro-average F1 score of 0.8484.ConclusionAs a pilot study of Chinese eligibility criteria analysis, we developed the 44 semantic categories by hierarchical clustering algorithms for the first times, and validated the classification capacity with multiple classification algorithms.

Highlights

  • Semantic categorization analysis of clinical trials eligibility criteria based on natural language processing technology is crucial for the task of optimizing clinical trials design and building automated patient recruitment system

  • The patients living with human immunodeficiency virus (HIV) or pregnant women are special populations and were excluded by specific defined eligibility criteria in many clinical trials

  • The American Society of Clinical Oncology studied the distribution of patients enrolled in clinical trials and real-world patients, and proposed that various types of eligibility criteria should be optimized and the restrictions should be relaxed appropriately [3]

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Summary

Introduction

Semantic categorization analysis of clinical trials eligibility criteria based on natural language processing technology is crucial for the task of optimizing clinical trials design and building automated patient recruitment system. The 2018 National Natural Language Processing Clinical Challenges (N2C2) [7] focused on automatic diabetic patients recruitment, predefined 13 diabetes specific categories of eligibility criteria, such as “Hba1c” and “Creatinine”, and released 288 complete longitudinal narrative medical records of diabetic patients. It aimed to explore whether it is possible to identify which patient meet eligible criteria by building an automated natural language processing system. Most of these work focused on the patient’s special characteristics which are relatively small proportion in the overall eligibility criteria

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