TAX-Corpus: Taxonomy based Annotations for Colonoscopy Evaluation

Shorabuddin Syed, Adam Angel, H. Syeda, Carole Jennings, Joseph VanScoy, Mahanazuddin Syed, M. Greer, S. Bhattacharyya, S. Al-Shukri, M. Zozus, F. Prior, B. Tharian
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Abstract

Colonoscopy plays a critical role in screening of colorectal carcinomas (CC). Unfortunately, the data related to this procedure are stored in disparate documents, colonoscopy, pathology, and radiology reports respectively. The lack of integrated standardized documentation is impeding accurate reporting of quality metrics and clinical and translational research. Natural language processing (NLP) has been used as an alternative to manual data abstraction. Performance of Machine Learning (ML) based NLP solutions is heavily dependent on the accuracy of annotated corpora. Availability of large volume annotated corpora is limited due to data privacy laws and the cost and effort required. In addition, the manual annotation process is error-prone, making the lack of quality annotated corpora the largest bottleneck in deploying ML solutions. The objective of this study is to identify clinical entities critical to colonoscopy quality, and build a high-quality annotated corpus using domain specific taxonomies following standardized annotation guidelines. The annotated corpus can be used to train ML models for a variety of downstream tasks.
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TAX-Corpus:基于分类的结肠镜评估注释
结肠镜检查在结直肠癌(CC)筛查中起着至关重要的作用。不幸的是,与此过程相关的数据分别存储在不同的文档中,结肠镜检查、病理和放射学报告。缺乏综合的标准化文件妨碍了质量指标和临床及转化研究的准确报告。自然语言处理(NLP)已被用作人工数据抽象的替代方法。基于机器学习(ML)的NLP解决方案的性能在很大程度上依赖于标注语料库的准确性。由于数据隐私法以及所需的成本和工作量,大容量带注释的语料库的可用性受到限制。此外,手工标注过程容易出错,这使得缺乏高质量的标注语料库成为部署机器学习解决方案的最大瓶颈。本研究的目的是确定对结肠镜检查质量至关重要的临床实体,并根据标准化的注释指南,使用特定领域的分类法构建高质量的注释语料库。带注释的语料库可用于训练ML模型,用于各种下游任务。
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Biomedical Engineering Systems and Technologies: 15th International Joint Conference, BIOSTEC 2022, Virtual Event, February 9–11, 2022, Revised Selected Papers Comparative Analysis of Patient Distress in Opioid Treatment Programs using Natural Language Processing The h-ANN Model: Comprehensive Colonoscopy Concept Compilation using Combined Contextual Embeddings TAX-Corpus: Taxonomy based Annotations for Colonoscopy Evaluation DeIDNER Model: A Neural Network Named Entity Recognition Model for Use in the De-identification of Clinical Notes
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