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Automatic Assistance Method for Disease Diagnosis Based on a Deep Learning Fusion Model and Chinese Electronic Medical Record

Published: 25 May 2021 Publication History

Abstract

Extracting disease characteristics from large-scale Electronic Medical Records and achieving disease-assisted diagnoses have significant research value. Due to the complex multi-feature items and unbalanced data distribution of Electronic Medical Records, feature representation and disease diagnosis are difficult. Our study proposes a deep feature fusion (DFF) model based on the feature partition and deep feature extraction. First, the feature partition is performed, and different feature representation algorithms are adopted for different types of data. The discrete feature items are directly mapped into real-valued vectors, and the continuous feature items are represented by GCNN-based VAE. Then, the two parts are fused. Finally, the assisted diagnosis results are output through a supervised learning classification method based on the XGBoost framework. The dataset of our study is from the 18,590 real and effective clinical Electronic Medical Record of Huangshi Central Hospital. The experimental results show that the method can perform clinical Assisted diagnosis accurately and efficiently, which are superior to some other state-of-the-art approaches, can better meet the needs of practical clinical diagnosis applications.

References

[1]
Al‐Janabi, S., A. Huisman, and P.J. Van Diest, Digital pathology: current status and future perspectives.Histopathology, 2012. 61 (1): p. 1-9.
[2]
Andreu-Perez, J., Big data for health.IEEE journal of biomedical and health informatics, 2015. 19 (4): p. 1193-1208.
[3]
Obermeyer, Z. and E.J. Emanuel, Predicting the future—big data, machine learning, and clinical medicine.The New England journal of medicine, 2016. 375 (13): p. 1216.
[4]
Luo, J., Big data application in biomedical research and health care: a literature review.Biomedical informatics insights, 2016.8: p. BII. S31559.
[5]
Wang, L., Classification Model on Big Data in Medical Diagnosis Based on Semi-Supervised Learning.The Computer Journal, 2020.
[6]
Ayaad, O., The role of electronic medical records in improving the quality of health care services: Comparative study.International journal of medical informatics, 2019.127: p. 63-67.
[7]
Manias, E., Patient and family engagement in communicating with electronic medical records in hospitals: A systematic review.International journal of medical informatics, 2020.134: p. 104036.
[8]
Sharikh, E.A., The impact of electronic medical records' functions on the quality of health services.British Journal of Healthcare Management, 2020. 26 (2): p. 1-13.
[9]
Li, X., Intelligent diagnosis with Chinese electronic medical records based on convolutional neural networks.BMC bioinformatics, 2019. 20 (1): p. 62.
[10]
Zhang, Z., Attention-based deep residual learning network for entity relation extraction in Chinese EMRs.BMC medical informatics and decision making, 2019. 19 (2): p. 55.
[11]
Zhang, Z., L. Zhu, and P. Yu, Multi-Level Representation Learning for Chinese Medical Entity Recognition: Model Development and Validation.JMIR Medical Informatics, 2020. 8 (5): p. e17637.
[12]
Dong, W., Research and application of electronic medical record retrieval based on latent semantic correlation algorithm.Northeastern University, 2012.
[13]
Zhang Kaixu, Z.C., Unsupervised learning of Chinese vocabulary features based on automatic encoder.Journal of Chinese Information Processing, 2013.27(5): p. 1-8.
[14]
Guolei, L., Latent Semantic Analysis of Electronic Medical Record Text for Clinical Decision Making.Data Analysis and Knowledge Discovery, 2016. 32 (3): p. 50-57.
[15]
Nezhad, M.Z., A predictive approach using deep feature learning for electronic medical records: A comparative study.arXiv preprint arXiv:1801.02961, 2018.
[16]
Yang, Z., Clinical assistant diagnosis for electronic medical record based on convolutional neural network.Scientific reports, 2018. 8 (1): p. 1-9.
[17]
Liang, Z., Deep generative learning for automated EHR diagnosis of traditional Chinese medicine.Computer methods and programs in biomedicine, 2019.174: p. 17-23.
[18]
Ni, P., Disease diagnosis prediction of emr based on BiGRU-ATT-capsnetwork model. in2019 IEEE International Conference on Big Data (Big Data). 2019. IEEE.
[19]
Choi, E., Multi-layer representation learning for medical concepts. in Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. 2016.
[20]
Dauphin, Y.N., Language modeling with gated convolutional networks. in International conference on machine learning. 2017.
[21]
Mikolov, T., Distributed representations of words and phrases and their compositionality. in Advances in neural information processing systems. 2013.
[22]
Kim, Y., Convolutional neural networks for sentence classification.arXiv preprint arXiv:1408.5882, 2014.
[23]
Guo, D., S. Shamai, and S. Verdú, Mutual information and minimum mean-square error in Gaussian channels.IEEE Transactions on Information Theory, 2005. 51 (4): p. 1261-1282.
[24]
Ruder, S., An overview of gradient descent optimization algorithms.arXiv preprint arXiv:1609.04747, 2016.
[25]
Chen, T. and C. Guestrin. Xgboost: A scalable tree boosting system. in Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining. 2016.
[26]
Friedman, J.H., Stochastic gradient boosting.Computational statistics & data analysis, 2002. 38 (4): p. 367-378.
[27]
Health, M.o., Basic Rules for Writing Medical Records (Trial) Chinese Health Law, 2002.1(5): p. 183–186.
[28]
Health, M.o., Basic Rules for Writing Medical Records (Trial).China Health Quality Management, 2010.1(4): p. 13-14.
[29]
Sun, M., Thulac: An efficient lexical analyzer for chinese. 2016.
[30]
Conklin, J.D., Applied logistic regression. 2002, Taylor & Francis.
[31]
Rifkin, R. and A. Klautau, In defense of one-vs-all classification.Journal of machine learning research, 2004. 5 (Jan): p. 101-141.

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          ICBBB '21: Proceedings of the 2021 11th International Conference on Bioscience, Biochemistry and Bioinformatics
          January 2021
          76 pages
          ISBN:9781450388047
          DOI:10.1145/3448340
          Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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          Publication History

          Published: 25 May 2021

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          Author Tags

          1. Automatic assistance
          2. Chinese electronic medical record
          3. Deep learning
          4. Features partition

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