Creating a computer assisted ICD coding system: Performance metric choice and use of the ICD hierarchy
Machine learning methods hold the promise of leveraging available data and generating higher-quality data while alleviating the data collection burden on healthcare professionals. International Classification of Diseases (ICD) diagnoses data, collected globally for billing and epidemiological purpos...
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Veröffentlicht in: | Journal of biomedical informatics 2024-04, Vol.152, p.104617-104617, Article 104617 |
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creator | Marcou, Quentin Berti-Equille, Laure Novelli, Noël |
description | Machine learning methods hold the promise of leveraging available data and generating higher-quality data while alleviating the data collection burden on healthcare professionals. International Classification of Diseases (ICD) diagnoses data, collected globally for billing and epidemiological purposes, represents a valuable source of structured information. However, ICD coding is a challenging task. While numerous previous studies reported promising results in automatic ICD classification, they often describe input data specific model architectures, that are heterogeneously evaluated with different performance metrics and ICD code subsets.
This study aims to explore the evaluation and construction of more effective Computer Assisted Coding (CAC) systems using generic approaches, focusing on the use of ICD hierarchy, medication data and a feed forward neural network architecture.
We conduct comprehensive experiments using the MIMIC-III clinical database, mapped to the OMOP data model. Our evaluations encompass various performance metrics, alongside investigations into multitask, hierarchical, and imbalanced learning for neural networks.
We introduce a novel metric, ▪ , tailored to the ICD coding task, which offers interpretable insights for healthcare informatics practitioners, aiding them in assessing the quality of assisted coding systems. Our findings highlight that selectively cherry-picking ICD codes diminish retrieval performance without performance improvement over the selected subset. We show that optimizing for metrics such as NDCG and AUPRC outperforms traditional F1-based metrics in ranking performance. We observe that Neural Network training on different ICD levels simultaneously offers minor benefits for ranking and significant runtime gains. However, our models do not derive benefits from hierarchical or class imbalance correction techniques for ICD code retrieval.
This study offers valuable insights for researchers and healthcare practitioners interested in developing and evaluating CAC systems. Using a straightforward sequential neural network model, we confirm that medical prescriptions are a rich data source for CAC systems, providing competitive retrieval capabilities for a fraction of the computational load compared to text-based models. Our study underscores the importance of metric selection and challenges existing practices related to ICD code sub-setting for model training and evaluation.
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doi_str_mv | 10.1016/j.jbi.2024.104617 |
format | Article |
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This study aims to explore the evaluation and construction of more effective Computer Assisted Coding (CAC) systems using generic approaches, focusing on the use of ICD hierarchy, medication data and a feed forward neural network architecture.
We conduct comprehensive experiments using the MIMIC-III clinical database, mapped to the OMOP data model. Our evaluations encompass various performance metrics, alongside investigations into multitask, hierarchical, and imbalanced learning for neural networks.
We introduce a novel metric, ▪ , tailored to the ICD coding task, which offers interpretable insights for healthcare informatics practitioners, aiding them in assessing the quality of assisted coding systems. Our findings highlight that selectively cherry-picking ICD codes diminish retrieval performance without performance improvement over the selected subset. We show that optimizing for metrics such as NDCG and AUPRC outperforms traditional F1-based metrics in ranking performance. We observe that Neural Network training on different ICD levels simultaneously offers minor benefits for ranking and significant runtime gains. However, our models do not derive benefits from hierarchical or class imbalance correction techniques for ICD code retrieval.
This study offers valuable insights for researchers and healthcare practitioners interested in developing and evaluating CAC systems. Using a straightforward sequential neural network model, we confirm that medical prescriptions are a rich data source for CAC systems, providing competitive retrieval capabilities for a fraction of the computational load compared to text-based models. Our study underscores the importance of metric selection and challenges existing practices related to ICD code sub-setting for model training and evaluation.
[Display omitted]</description><identifier>ISSN: 1532-0464</identifier><identifier>EISSN: 1532-0480</identifier><identifier>DOI: 10.1016/j.jbi.2024.104617</identifier><identifier>PMID: 38432534</identifier><language>eng</language><publisher>United States: Elsevier Inc</publisher><subject>Clinical Coding - methods ; Computer Science ; Computers ; Data Structures and Algorithms ; Electronic Health Records ; Hierarchical Multilabel Classification (HMC) ; Humans ; International Classification of Diseases ; International Classification of Diseases (ICD) ; Machine Learning ; Medication ; MIMIC-III ; Neural Networks, Computer ; OMOP ; Recommender systems</subject><ispartof>Journal of biomedical informatics, 2024-04, Vol.152, p.104617-104617, Article 104617</ispartof><rights>2024 The Author(s)</rights><rights>Copyright © 2024 The Author(s). Published by Elsevier Inc. All rights reserved.</rights><rights>Attribution - NonCommercial</rights><lds50>peer_reviewed</lds50><oa>free_for_read</oa><woscitedreferencessubscribed>false</woscitedreferencessubscribed><cites>FETCH-LOGICAL-c382t-a4dee1a880bf4284c2eb0abc06ce0e1fcfa900e2db32d4be9b6a481e3295a6cb3</cites><orcidid>0000-0002-8046-0570 ; 0000-0001-7074-2761</orcidid></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><linktohtml>$$Uhttps://dx.doi.org/10.1016/j.jbi.2024.104617$$EHTML$$P50$$Gelsevier$$Hfree_for_read</linktohtml><link.rule.ids>230,314,780,784,885,3550,27924,27925,45995</link.rule.ids><backlink>$$Uhttps://www.ncbi.nlm.nih.gov/pubmed/38432534$$D View this record in MEDLINE/PubMed$$Hfree_for_read</backlink><backlink>$$Uhttps://hal.science/hal-04531816$$DView record in HAL$$Hfree_for_read</backlink></links><search><creatorcontrib>Marcou, Quentin</creatorcontrib><creatorcontrib>Berti-Equille, Laure</creatorcontrib><creatorcontrib>Novelli, Noël</creatorcontrib><title>Creating a computer assisted ICD coding system: Performance metric choice and use of the ICD hierarchy</title><title>Journal of biomedical informatics</title><addtitle>J Biomed Inform</addtitle><description>Machine learning methods hold the promise of leveraging available data and generating higher-quality data while alleviating the data collection burden on healthcare professionals. International Classification of Diseases (ICD) diagnoses data, collected globally for billing and epidemiological purposes, represents a valuable source of structured information. However, ICD coding is a challenging task. While numerous previous studies reported promising results in automatic ICD classification, they often describe input data specific model architectures, that are heterogeneously evaluated with different performance metrics and ICD code subsets.
This study aims to explore the evaluation and construction of more effective Computer Assisted Coding (CAC) systems using generic approaches, focusing on the use of ICD hierarchy, medication data and a feed forward neural network architecture.
We conduct comprehensive experiments using the MIMIC-III clinical database, mapped to the OMOP data model. Our evaluations encompass various performance metrics, alongside investigations into multitask, hierarchical, and imbalanced learning for neural networks.
We introduce a novel metric, ▪ , tailored to the ICD coding task, which offers interpretable insights for healthcare informatics practitioners, aiding them in assessing the quality of assisted coding systems. Our findings highlight that selectively cherry-picking ICD codes diminish retrieval performance without performance improvement over the selected subset. We show that optimizing for metrics such as NDCG and AUPRC outperforms traditional F1-based metrics in ranking performance. We observe that Neural Network training on different ICD levels simultaneously offers minor benefits for ranking and significant runtime gains. However, our models do not derive benefits from hierarchical or class imbalance correction techniques for ICD code retrieval.
This study offers valuable insights for researchers and healthcare practitioners interested in developing and evaluating CAC systems. Using a straightforward sequential neural network model, we confirm that medical prescriptions are a rich data source for CAC systems, providing competitive retrieval capabilities for a fraction of the computational load compared to text-based models. Our study underscores the importance of metric selection and challenges existing practices related to ICD code sub-setting for model training and evaluation.
[Display omitted]</description><subject>Clinical Coding - methods</subject><subject>Computer Science</subject><subject>Computers</subject><subject>Data Structures and Algorithms</subject><subject>Electronic Health Records</subject><subject>Hierarchical Multilabel Classification (HMC)</subject><subject>Humans</subject><subject>International Classification of Diseases</subject><subject>International Classification of Diseases (ICD)</subject><subject>Machine Learning</subject><subject>Medication</subject><subject>MIMIC-III</subject><subject>Neural Networks, Computer</subject><subject>OMOP</subject><subject>Recommender systems</subject><issn>1532-0464</issn><issn>1532-0480</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2024</creationdate><recordtype>article</recordtype><sourceid>EIF</sourceid><recordid>eNp9kUtrGzEUhUVIyav9AdkULdOFHb1mLCer4DZ1wJAs2rW4ku5kZDyWK80E_O8rd1IvAwLpXn3nLM4h5JqzKWe8vl1P1zZMBROqzKrmsxNywSspJkxpdnp81-qcXOa8ZozzqqrPyLnUSopKqgvSLBJCH7avFKiL3W7oMVHIOeQePX1afC9bf_jO-7Lp7ugLpiamDrYOaYd9Co66NoYywdbTISONDe1b_KdtAyZIrt1_Jp8a2GT88n5fkd-PP34tlpPV88-nxcNq4qQW_QSUR-SgNbONElo5gZaBdax2yJA3roE5Yyi8lcIri3Nbg9IcpZhXUDsrr8i30beFjdml0EHamwjBLB9W5rBjqpJc8_qNF_ZmZHcp_hkw96YL2eFmA1uMQzZiLmeyHM0KykfUpZhzwubozZk5VGHWplRhDlWYsYqi-fpuP9gO_VHxP_sC3I8AlkDeSlImu4AlVx8Sut74GD6w_wve0Zjt</recordid><startdate>20240401</startdate><enddate>20240401</enddate><creator>Marcou, Quentin</creator><creator>Berti-Equille, Laure</creator><creator>Novelli, Noël</creator><general>Elsevier Inc</general><general>Elsevier</general><scope>6I.</scope><scope>AAFTH</scope><scope>CGR</scope><scope>CUY</scope><scope>CVF</scope><scope>ECM</scope><scope>EIF</scope><scope>NPM</scope><scope>AAYXX</scope><scope>CITATION</scope><scope>7X8</scope><scope>1XC</scope><scope>VOOES</scope><orcidid>https://orcid.org/0000-0002-8046-0570</orcidid><orcidid>https://orcid.org/0000-0001-7074-2761</orcidid></search><sort><creationdate>20240401</creationdate><title>Creating a computer assisted ICD coding system: Performance metric choice and use of the ICD hierarchy</title><author>Marcou, Quentin ; Berti-Equille, Laure ; Novelli, Noël</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c382t-a4dee1a880bf4284c2eb0abc06ce0e1fcfa900e2db32d4be9b6a481e3295a6cb3</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2024</creationdate><topic>Clinical Coding - methods</topic><topic>Computer Science</topic><topic>Computers</topic><topic>Data Structures and Algorithms</topic><topic>Electronic Health Records</topic><topic>Hierarchical Multilabel Classification (HMC)</topic><topic>Humans</topic><topic>International Classification of Diseases</topic><topic>International Classification of Diseases (ICD)</topic><topic>Machine Learning</topic><topic>Medication</topic><topic>MIMIC-III</topic><topic>Neural Networks, Computer</topic><topic>OMOP</topic><topic>Recommender systems</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Marcou, Quentin</creatorcontrib><creatorcontrib>Berti-Equille, Laure</creatorcontrib><creatorcontrib>Novelli, Noël</creatorcontrib><collection>ScienceDirect Open Access Titles</collection><collection>Elsevier:ScienceDirect:Open Access</collection><collection>Medline</collection><collection>MEDLINE</collection><collection>MEDLINE (Ovid)</collection><collection>MEDLINE</collection><collection>MEDLINE</collection><collection>PubMed</collection><collection>CrossRef</collection><collection>MEDLINE - Academic</collection><collection>Hyper Article en Ligne (HAL)</collection><collection>Hyper Article en Ligne (HAL) (Open Access)</collection><jtitle>Journal of biomedical informatics</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Marcou, Quentin</au><au>Berti-Equille, Laure</au><au>Novelli, Noël</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Creating a computer assisted ICD coding system: Performance metric choice and use of the ICD hierarchy</atitle><jtitle>Journal of biomedical informatics</jtitle><addtitle>J Biomed Inform</addtitle><date>2024-04-01</date><risdate>2024</risdate><volume>152</volume><spage>104617</spage><epage>104617</epage><pages>104617-104617</pages><artnum>104617</artnum><issn>1532-0464</issn><eissn>1532-0480</eissn><abstract>Machine learning methods hold the promise of leveraging available data and generating higher-quality data while alleviating the data collection burden on healthcare professionals. International Classification of Diseases (ICD) diagnoses data, collected globally for billing and epidemiological purposes, represents a valuable source of structured information. However, ICD coding is a challenging task. While numerous previous studies reported promising results in automatic ICD classification, they often describe input data specific model architectures, that are heterogeneously evaluated with different performance metrics and ICD code subsets.
This study aims to explore the evaluation and construction of more effective Computer Assisted Coding (CAC) systems using generic approaches, focusing on the use of ICD hierarchy, medication data and a feed forward neural network architecture.
We conduct comprehensive experiments using the MIMIC-III clinical database, mapped to the OMOP data model. Our evaluations encompass various performance metrics, alongside investigations into multitask, hierarchical, and imbalanced learning for neural networks.
We introduce a novel metric, ▪ , tailored to the ICD coding task, which offers interpretable insights for healthcare informatics practitioners, aiding them in assessing the quality of assisted coding systems. Our findings highlight that selectively cherry-picking ICD codes diminish retrieval performance without performance improvement over the selected subset. We show that optimizing for metrics such as NDCG and AUPRC outperforms traditional F1-based metrics in ranking performance. We observe that Neural Network training on different ICD levels simultaneously offers minor benefits for ranking and significant runtime gains. However, our models do not derive benefits from hierarchical or class imbalance correction techniques for ICD code retrieval.
This study offers valuable insights for researchers and healthcare practitioners interested in developing and evaluating CAC systems. Using a straightforward sequential neural network model, we confirm that medical prescriptions are a rich data source for CAC systems, providing competitive retrieval capabilities for a fraction of the computational load compared to text-based models. Our study underscores the importance of metric selection and challenges existing practices related to ICD code sub-setting for model training and evaluation.
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subjects | Clinical Coding - methods Computer Science Computers Data Structures and Algorithms Electronic Health Records Hierarchical Multilabel Classification (HMC) Humans International Classification of Diseases International Classification of Diseases (ICD) Machine Learning Medication MIMIC-III Neural Networks, Computer OMOP Recommender systems |
title | Creating a computer assisted ICD coding system: Performance metric choice and use of the ICD hierarchy |
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