PASCAL: a pseudo cascade learning framework for breast cancer treatment entity normalization in Chinese clinical text

Abstract Backgrounds Knowledge discovery from breast cancer treatment records has promoted downstream clinical studies such as careflow mining and therapy analysis. However, the clinical treatment text from electronic health data might be recorded by different doctors under their hospital guidelines...

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Main Authors: Yang An, Jianlin Wang, Liang Zhang, Hanyu Zhao, Zhan Gao, Haitao Huang, Zhenguang Du, Zengtao Jiao, Jun Yan, Xiaopeng Wei, Bo Jin
Format: Article
Language:English
Published: BMC 2020-08-01
Series:BMC Medical Informatics and Decision Making
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12911-020-01216-9
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spelling doaj-d64efb264eeb46069b374b78fecb0ce02020-11-25T03:49:25ZengBMCBMC Medical Informatics and Decision Making1472-69472020-08-0120111210.1186/s12911-020-01216-9PASCAL: a pseudo cascade learning framework for breast cancer treatment entity normalization in Chinese clinical textYang An0Jianlin Wang1Liang Zhang2Hanyu Zhao3Zhan Gao4Haitao Huang5Zhenguang Du6Zengtao Jiao7Jun Yan8Xiaopeng Wei9Bo Jin10School of Computer Science and Technology, Dalian University of TechnologyFirst Hospital of Lanzhou UniversityInternational Bussiness College, Dongbei University of Finance and EconomicsDalian UniversityBeiJing Haoyisheng Cloud Hospital Management Technology Ltd.The People’s Hospital of Liaoning ProvinceThe People’s Hospital of Liaoning ProvinceAI Lab, Yidu CloudAI Lab, Yidu CloudSchool of Computer Science and Technology, Dalian University of TechnologySchool of Innovation and Entrepreneurship, Dalian University of TechnologyAbstract Backgrounds Knowledge discovery from breast cancer treatment records has promoted downstream clinical studies such as careflow mining and therapy analysis. However, the clinical treatment text from electronic health data might be recorded by different doctors under their hospital guidelines, making the final data rich in author- and domain-specific idiosyncrasies. Therefore, breast cancer treatment entity normalization becomes an essential task for the above downstream clinical studies. The latest studies have demonstrated the superiority of deep learning methods in named entity normalization tasks. Fundamentally, most existing approaches adopt pipeline implementations that treat it as an independent process after named entity recognition, which can propagate errors to later tasks. In addition, despite its importance in clinical and translational research, few studies directly deal with the normalization task in Chinese clinical text due to the complexity of composition forms. Methods To address these issues, we propose PASCAL, an end-to-end and accurate framework for breast cancer treatment entity normalization (TEN). PASCAL leverages a gated convolutional neural network to obtain a representation vector that can capture contextual features and long-term dependencies. Additionally, it treats treatment entity recognition (TER) as an auxiliary task that can provide meaningful information to the primary TEN task and as a particular regularization to further optimize the shared parameters. Finally, by concatenating the context-aware vector and probabilistic distribution vector from TEN, we utilize the conditional random field layer (CRF) to model the normalization sequence and predict the TEN sequential results. Results To evaluate the effectiveness of the proposed framework, we employ the three latest sequential models as baselines and build the model in single- and multitask on a real-world database. Experimental results show that our method achieves better accuracy and efficiency than state-of-the-art approaches. Conclusions The effectiveness and efficiency of the presented pseudo cascade learning framework were validated for breast cancer treatment normalization in clinical text. We believe the predominant performance lies in its ability to extract valuable information from unstructured text data, which will significantly contribute to downstream tasks, such as treatment recommendations, breast cancer staging and careflow mining.http://link.springer.com/article/10.1186/s12911-020-01216-9Breast cancerCascade learningTreatment entity normalizationChinese clinical text mining
collection DOAJ
language English
format Article
sources DOAJ
author Yang An
Jianlin Wang
Liang Zhang
Hanyu Zhao
Zhan Gao
Haitao Huang
Zhenguang Du
Zengtao Jiao
Jun Yan
Xiaopeng Wei
Bo Jin
spellingShingle Yang An
Jianlin Wang
Liang Zhang
Hanyu Zhao
Zhan Gao
Haitao Huang
Zhenguang Du
Zengtao Jiao
Jun Yan
Xiaopeng Wei
Bo Jin
PASCAL: a pseudo cascade learning framework for breast cancer treatment entity normalization in Chinese clinical text
BMC Medical Informatics and Decision Making
Breast cancer
Cascade learning
Treatment entity normalization
Chinese clinical text mining
author_facet Yang An
Jianlin Wang
Liang Zhang
Hanyu Zhao
Zhan Gao
Haitao Huang
Zhenguang Du
Zengtao Jiao
Jun Yan
Xiaopeng Wei
Bo Jin
author_sort Yang An
title PASCAL: a pseudo cascade learning framework for breast cancer treatment entity normalization in Chinese clinical text
title_short PASCAL: a pseudo cascade learning framework for breast cancer treatment entity normalization in Chinese clinical text
title_full PASCAL: a pseudo cascade learning framework for breast cancer treatment entity normalization in Chinese clinical text
title_fullStr PASCAL: a pseudo cascade learning framework for breast cancer treatment entity normalization in Chinese clinical text
title_full_unstemmed PASCAL: a pseudo cascade learning framework for breast cancer treatment entity normalization in Chinese clinical text
title_sort pascal: a pseudo cascade learning framework for breast cancer treatment entity normalization in chinese clinical text
publisher BMC
series BMC Medical Informatics and Decision Making
issn 1472-6947
publishDate 2020-08-01
description Abstract Backgrounds Knowledge discovery from breast cancer treatment records has promoted downstream clinical studies such as careflow mining and therapy analysis. However, the clinical treatment text from electronic health data might be recorded by different doctors under their hospital guidelines, making the final data rich in author- and domain-specific idiosyncrasies. Therefore, breast cancer treatment entity normalization becomes an essential task for the above downstream clinical studies. The latest studies have demonstrated the superiority of deep learning methods in named entity normalization tasks. Fundamentally, most existing approaches adopt pipeline implementations that treat it as an independent process after named entity recognition, which can propagate errors to later tasks. In addition, despite its importance in clinical and translational research, few studies directly deal with the normalization task in Chinese clinical text due to the complexity of composition forms. Methods To address these issues, we propose PASCAL, an end-to-end and accurate framework for breast cancer treatment entity normalization (TEN). PASCAL leverages a gated convolutional neural network to obtain a representation vector that can capture contextual features and long-term dependencies. Additionally, it treats treatment entity recognition (TER) as an auxiliary task that can provide meaningful information to the primary TEN task and as a particular regularization to further optimize the shared parameters. Finally, by concatenating the context-aware vector and probabilistic distribution vector from TEN, we utilize the conditional random field layer (CRF) to model the normalization sequence and predict the TEN sequential results. Results To evaluate the effectiveness of the proposed framework, we employ the three latest sequential models as baselines and build the model in single- and multitask on a real-world database. Experimental results show that our method achieves better accuracy and efficiency than state-of-the-art approaches. Conclusions The effectiveness and efficiency of the presented pseudo cascade learning framework were validated for breast cancer treatment normalization in clinical text. We believe the predominant performance lies in its ability to extract valuable information from unstructured text data, which will significantly contribute to downstream tasks, such as treatment recommendations, breast cancer staging and careflow mining.
topic Breast cancer
Cascade learning
Treatment entity normalization
Chinese clinical text mining
url http://link.springer.com/article/10.1186/s12911-020-01216-9
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