Selecting Interpretability Techniques for Healthcare Machine Learning models

In healthcare there is a pursuit for employing interpretable algorithms to assist healthcare professionals in several decision scenarios. Following the Predictive, Descriptive and Relevant (PDR) framework, the definition of interpretable machine learning as a machine-learning model that explicitly a...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Hauptverfasser: Sierra-Botero, Daniel, Molina-Taborda, Ana, Valdés-Tresanco, Mario S, Hernández-Arango, Alejandro, Espinosa-Leal, Leonardo, Karpenko, Alexander, Lopez-Acevedo, Olga
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext bestellen
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
container_end_page
container_issue
container_start_page
container_title
container_volume
creator Sierra-Botero, Daniel
Molina-Taborda, Ana
Valdés-Tresanco, Mario S
Hernández-Arango, Alejandro
Espinosa-Leal, Leonardo
Karpenko, Alexander
Lopez-Acevedo, Olga
description In healthcare there is a pursuit for employing interpretable algorithms to assist healthcare professionals in several decision scenarios. Following the Predictive, Descriptive and Relevant (PDR) framework, the definition of interpretable machine learning as a machine-learning model that explicitly and in a simple frame determines relationships either contained in data or learned by the model that are relevant for its functioning and the categorization of models by post-hoc, acquiring interpretability after training, or model-based, being intrinsically embedded in the algorithm design. We overview a selection of eight algorithms, both post-hoc and model-based, that can be used for such purposes.
doi_str_mv 10.48550/arxiv.2406.10213
format Article
fullrecord <record><control><sourceid>arxiv_GOX</sourceid><recordid>TN_cdi_arxiv_primary_2406_10213</recordid><sourceformat>XML</sourceformat><sourcesystem>PC</sourcesystem><sourcerecordid>2406_10213</sourcerecordid><originalsourceid>FETCH-LOGICAL-a673-d87d766f125793e86c3c88ef476f8573297547453896a9b480ad7cb5f33329613</originalsourceid><addsrcrecordid>eNotz71OwzAUBWAvDKjwAEz4BRLs-DcjqoBWCupA9ujGuSaWXLc4BtG3hxamMxydI32E3HFWS6sUe4D8Hb7qRjJdc9ZwcU26N4zoSkjvdJsK5mPGAmOIoZxoj25O4eMTF-oPmW4QYpkdZKSv4OaQkHYIOZ23-8OEcbkhVx7igrf_uSL981O_3lTd7mW7fuwq0EZUkzWT0drzRplWoNVOOGvRS6O9VUY0rVHSSCVsq6EdpWUwGTcqL8Rvp7lYkfu_2wtnOOawh3wazqzhwhI_DatHXQ</addsrcrecordid><sourcetype>Open Access Repository</sourcetype><iscdi>true</iscdi><recordtype>article</recordtype></control><display><type>article</type><title>Selecting Interpretability Techniques for Healthcare Machine Learning models</title><source>arXiv.org</source><creator>Sierra-Botero, Daniel ; Molina-Taborda, Ana ; Valdés-Tresanco, Mario S ; Hernández-Arango, Alejandro ; Espinosa-Leal, Leonardo ; Karpenko, Alexander ; Lopez-Acevedo, Olga</creator><creatorcontrib>Sierra-Botero, Daniel ; Molina-Taborda, Ana ; Valdés-Tresanco, Mario S ; Hernández-Arango, Alejandro ; Espinosa-Leal, Leonardo ; Karpenko, Alexander ; Lopez-Acevedo, Olga</creatorcontrib><description>In healthcare there is a pursuit for employing interpretable algorithms to assist healthcare professionals in several decision scenarios. Following the Predictive, Descriptive and Relevant (PDR) framework, the definition of interpretable machine learning as a machine-learning model that explicitly and in a simple frame determines relationships either contained in data or learned by the model that are relevant for its functioning and the categorization of models by post-hoc, acquiring interpretability after training, or model-based, being intrinsically embedded in the algorithm design. We overview a selection of eight algorithms, both post-hoc and model-based, that can be used for such purposes.</description><identifier>DOI: 10.48550/arxiv.2406.10213</identifier><language>eng</language><subject>Computer Science - Learning</subject><creationdate>2024-06</creationdate><rights>http://creativecommons.org/licenses/by/4.0</rights><oa>free_for_read</oa><woscitedreferencessubscribed>false</woscitedreferencessubscribed></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>228,230,776,881</link.rule.ids><linktorsrc>$$Uhttps://arxiv.org/abs/2406.10213$$EView_record_in_Cornell_University$$FView_record_in_$$GCornell_University$$Hfree_for_read</linktorsrc><backlink>$$Uhttps://doi.org/10.48550/arXiv.2406.10213$$DView paper in arXiv$$Hfree_for_read</backlink></links><search><creatorcontrib>Sierra-Botero, Daniel</creatorcontrib><creatorcontrib>Molina-Taborda, Ana</creatorcontrib><creatorcontrib>Valdés-Tresanco, Mario S</creatorcontrib><creatorcontrib>Hernández-Arango, Alejandro</creatorcontrib><creatorcontrib>Espinosa-Leal, Leonardo</creatorcontrib><creatorcontrib>Karpenko, Alexander</creatorcontrib><creatorcontrib>Lopez-Acevedo, Olga</creatorcontrib><title>Selecting Interpretability Techniques for Healthcare Machine Learning models</title><description>In healthcare there is a pursuit for employing interpretable algorithms to assist healthcare professionals in several decision scenarios. Following the Predictive, Descriptive and Relevant (PDR) framework, the definition of interpretable machine learning as a machine-learning model that explicitly and in a simple frame determines relationships either contained in data or learned by the model that are relevant for its functioning and the categorization of models by post-hoc, acquiring interpretability after training, or model-based, being intrinsically embedded in the algorithm design. We overview a selection of eight algorithms, both post-hoc and model-based, that can be used for such purposes.</description><subject>Computer Science - Learning</subject><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2024</creationdate><recordtype>article</recordtype><sourceid>GOX</sourceid><recordid>eNotz71OwzAUBWAvDKjwAEz4BRLs-DcjqoBWCupA9ujGuSaWXLc4BtG3hxamMxydI32E3HFWS6sUe4D8Hb7qRjJdc9ZwcU26N4zoSkjvdJsK5mPGAmOIoZxoj25O4eMTF-oPmW4QYpkdZKSv4OaQkHYIOZ23-8OEcbkhVx7igrf_uSL981O_3lTd7mW7fuwq0EZUkzWT0drzRplWoNVOOGvRS6O9VUY0rVHSSCVsq6EdpWUwGTcqL8Rvp7lYkfu_2wtnOOawh3wazqzhwhI_DatHXQ</recordid><startdate>20240614</startdate><enddate>20240614</enddate><creator>Sierra-Botero, Daniel</creator><creator>Molina-Taborda, Ana</creator><creator>Valdés-Tresanco, Mario S</creator><creator>Hernández-Arango, Alejandro</creator><creator>Espinosa-Leal, Leonardo</creator><creator>Karpenko, Alexander</creator><creator>Lopez-Acevedo, Olga</creator><scope>AKY</scope><scope>GOX</scope></search><sort><creationdate>20240614</creationdate><title>Selecting Interpretability Techniques for Healthcare Machine Learning models</title><author>Sierra-Botero, Daniel ; Molina-Taborda, Ana ; Valdés-Tresanco, Mario S ; Hernández-Arango, Alejandro ; Espinosa-Leal, Leonardo ; Karpenko, Alexander ; Lopez-Acevedo, Olga</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-a673-d87d766f125793e86c3c88ef476f8573297547453896a9b480ad7cb5f33329613</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2024</creationdate><topic>Computer Science - Learning</topic><toplevel>online_resources</toplevel><creatorcontrib>Sierra-Botero, Daniel</creatorcontrib><creatorcontrib>Molina-Taborda, Ana</creatorcontrib><creatorcontrib>Valdés-Tresanco, Mario S</creatorcontrib><creatorcontrib>Hernández-Arango, Alejandro</creatorcontrib><creatorcontrib>Espinosa-Leal, Leonardo</creatorcontrib><creatorcontrib>Karpenko, Alexander</creatorcontrib><creatorcontrib>Lopez-Acevedo, Olga</creatorcontrib><collection>arXiv Computer Science</collection><collection>arXiv.org</collection></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext_linktorsrc</fulltext></delivery><addata><au>Sierra-Botero, Daniel</au><au>Molina-Taborda, Ana</au><au>Valdés-Tresanco, Mario S</au><au>Hernández-Arango, Alejandro</au><au>Espinosa-Leal, Leonardo</au><au>Karpenko, Alexander</au><au>Lopez-Acevedo, Olga</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Selecting Interpretability Techniques for Healthcare Machine Learning models</atitle><date>2024-06-14</date><risdate>2024</risdate><abstract>In healthcare there is a pursuit for employing interpretable algorithms to assist healthcare professionals in several decision scenarios. Following the Predictive, Descriptive and Relevant (PDR) framework, the definition of interpretable machine learning as a machine-learning model that explicitly and in a simple frame determines relationships either contained in data or learned by the model that are relevant for its functioning and the categorization of models by post-hoc, acquiring interpretability after training, or model-based, being intrinsically embedded in the algorithm design. We overview a selection of eight algorithms, both post-hoc and model-based, that can be used for such purposes.</abstract><doi>10.48550/arxiv.2406.10213</doi><oa>free_for_read</oa></addata></record>
fulltext fulltext_linktorsrc
identifier DOI: 10.48550/arxiv.2406.10213
ispartof
issn
language eng
recordid cdi_arxiv_primary_2406_10213
source arXiv.org
subjects Computer Science - Learning
title Selecting Interpretability Techniques for Healthcare Machine Learning models
url https://sfx.bib-bvb.de/sfx_tum?ctx_ver=Z39.88-2004&ctx_enc=info:ofi/enc:UTF-8&ctx_tim=2025-01-28T13%3A43%3A26IST&url_ver=Z39.88-2004&url_ctx_fmt=infofi/fmt:kev:mtx:ctx&rfr_id=info:sid/primo.exlibrisgroup.com:primo3-Article-arxiv_GOX&rft_val_fmt=info:ofi/fmt:kev:mtx:journal&rft.genre=article&rft.atitle=Selecting%20Interpretability%20Techniques%20for%20Healthcare%20Machine%20Learning%20models&rft.au=Sierra-Botero,%20Daniel&rft.date=2024-06-14&rft_id=info:doi/10.48550/arxiv.2406.10213&rft_dat=%3Carxiv_GOX%3E2406_10213%3C/arxiv_GOX%3E%3Curl%3E%3C/url%3E&disable_directlink=true&sfx.directlink=off&sfx.report_link=0&rft_id=info:oai/&rft_id=info:pmid/&rfr_iscdi=true