Cargando…

Learning meaningful latent space representations for patient risk stratification: Model development and validation for dengue and other acute febrile illness

BACKGROUND: Increased data availability has prompted the creation of clinical decision support systems. These systems utilise clinical information to enhance health care provision, both to predict the likelihood of specific clinical outcomes or evaluate the risk of further complications. However, th...

Descripción completa

Detalles Bibliográficos
Autores principales: Hernandez, Bernard, Stiff, Oliver, Ming, Damien K., Ho Quang, Chanh, Nguyen Lam, Vuong, Nguyen Minh, Tuan, Nguyen Van Vinh, Chau, Nguyen Minh, Nguyet, Nguyen Quang, Huy, Phung Khanh, Lam, Dong Thi Hoai, Tam, Dinh The, Trung, Huynh Trung, Trieu, Wills, Bridget, Simmons, Cameron P., Holmes, Alison H., Yacoub, Sophie, Georgiou, Pantelis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9992802/
https://www.ncbi.nlm.nih.gov/pubmed/36910574
http://dx.doi.org/10.3389/fdgth.2023.1057467
_version_ 1784902397476208640
author Hernandez, Bernard
Stiff, Oliver
Ming, Damien K.
Ho Quang, Chanh
Nguyen Lam, Vuong
Nguyen Minh, Tuan
Nguyen Van Vinh, Chau
Nguyen Minh, Nguyet
Nguyen Quang, Huy
Phung Khanh, Lam
Dong Thi Hoai, Tam
Dinh The, Trung
Huynh Trung, Trieu
Wills, Bridget
Simmons, Cameron P.
Holmes, Alison H.
Yacoub, Sophie
Georgiou, Pantelis
author_facet Hernandez, Bernard
Stiff, Oliver
Ming, Damien K.
Ho Quang, Chanh
Nguyen Lam, Vuong
Nguyen Minh, Tuan
Nguyen Van Vinh, Chau
Nguyen Minh, Nguyet
Nguyen Quang, Huy
Phung Khanh, Lam
Dong Thi Hoai, Tam
Dinh The, Trung
Huynh Trung, Trieu
Wills, Bridget
Simmons, Cameron P.
Holmes, Alison H.
Yacoub, Sophie
Georgiou, Pantelis
author_sort Hernandez, Bernard
collection PubMed
description BACKGROUND: Increased data availability has prompted the creation of clinical decision support systems. These systems utilise clinical information to enhance health care provision, both to predict the likelihood of specific clinical outcomes or evaluate the risk of further complications. However, their adoption remains low due to concerns regarding the quality of recommendations, and a lack of clarity on how results are best obtained and presented. METHODS: We used autoencoders capable of reducing the dimensionality of complex datasets in order to produce a 2D representation denoted as latent space to support understanding of complex clinical data. In this output, meaningful representations of individual patient profiles are spatially mapped in an unsupervised manner according to their input clinical parameters. This technique was then applied to a large real-world clinical dataset of over 12,000 patients with an illness compatible with dengue infection in Ho Chi Minh City, Vietnam between 1999 and 2021. Dengue is a systemic viral disease which exerts significant health and economic burden worldwide, and up to 5% of hospitalised patients develop life-threatening complications. RESULTS: The latent space produced by the selected autoencoder aligns with established clinical characteristics exhibited by patients with dengue infection, as well as features of disease progression. Similar clinical phenotypes are represented close to each other in the latent space and clustered according to outcomes broadly described by the World Health Organisation dengue guidelines. Balancing distance metrics and density metrics produced results covering most of the latent space, and improved visualisation whilst preserving utility, with similar patients grouped closer together. In this case, this balance is achieved by using the sigmoid activation function and one hidden layer with three neurons, in addition to the latent dimension layer, which produces the output (Pearson, 0.840; Spearman, 0.830; Procrustes, 0.301; GMM 0.321). CONCLUSION: This study demonstrates that when adequately configured, autoencoders can produce two-dimensional representations of a complex dataset that conserve the distance relationship between points. The output visualisation groups patients with clinically relevant features closely together and inherently supports user interpretability. Work is underway to incorporate these findings into an electronic clinical decision support system to guide individual patient management.
format Online
Article
Text
id pubmed-9992802
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-99928022023-03-09 Learning meaningful latent space representations for patient risk stratification: Model development and validation for dengue and other acute febrile illness Hernandez, Bernard Stiff, Oliver Ming, Damien K. Ho Quang, Chanh Nguyen Lam, Vuong Nguyen Minh, Tuan Nguyen Van Vinh, Chau Nguyen Minh, Nguyet Nguyen Quang, Huy Phung Khanh, Lam Dong Thi Hoai, Tam Dinh The, Trung Huynh Trung, Trieu Wills, Bridget Simmons, Cameron P. Holmes, Alison H. Yacoub, Sophie Georgiou, Pantelis Front Digit Health Digital Health BACKGROUND: Increased data availability has prompted the creation of clinical decision support systems. These systems utilise clinical information to enhance health care provision, both to predict the likelihood of specific clinical outcomes or evaluate the risk of further complications. However, their adoption remains low due to concerns regarding the quality of recommendations, and a lack of clarity on how results are best obtained and presented. METHODS: We used autoencoders capable of reducing the dimensionality of complex datasets in order to produce a 2D representation denoted as latent space to support understanding of complex clinical data. In this output, meaningful representations of individual patient profiles are spatially mapped in an unsupervised manner according to their input clinical parameters. This technique was then applied to a large real-world clinical dataset of over 12,000 patients with an illness compatible with dengue infection in Ho Chi Minh City, Vietnam between 1999 and 2021. Dengue is a systemic viral disease which exerts significant health and economic burden worldwide, and up to 5% of hospitalised patients develop life-threatening complications. RESULTS: The latent space produced by the selected autoencoder aligns with established clinical characteristics exhibited by patients with dengue infection, as well as features of disease progression. Similar clinical phenotypes are represented close to each other in the latent space and clustered according to outcomes broadly described by the World Health Organisation dengue guidelines. Balancing distance metrics and density metrics produced results covering most of the latent space, and improved visualisation whilst preserving utility, with similar patients grouped closer together. In this case, this balance is achieved by using the sigmoid activation function and one hidden layer with three neurons, in addition to the latent dimension layer, which produces the output (Pearson, 0.840; Spearman, 0.830; Procrustes, 0.301; GMM 0.321). CONCLUSION: This study demonstrates that when adequately configured, autoencoders can produce two-dimensional representations of a complex dataset that conserve the distance relationship between points. The output visualisation groups patients with clinically relevant features closely together and inherently supports user interpretability. Work is underway to incorporate these findings into an electronic clinical decision support system to guide individual patient management. Frontiers Media S.A. 2023-02-22 /pmc/articles/PMC9992802/ /pubmed/36910574 http://dx.doi.org/10.3389/fdgth.2023.1057467 Text en © 2023 Hernandez, Stiff, Ming, Ho Quang, Nguyen Lam, Nguyen Minh, Nguyen Van Vinh, Nguyen Minh, Nguyen Quang, Phung Khanh, Dong Thi Hoai, Dinh The, Huynh Trung, Wills, Simmons, Holmes, Yacoub and Georgiou. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY) (https://creativecommons.org/licenses/by/4.0/) . The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Digital Health
Hernandez, Bernard
Stiff, Oliver
Ming, Damien K.
Ho Quang, Chanh
Nguyen Lam, Vuong
Nguyen Minh, Tuan
Nguyen Van Vinh, Chau
Nguyen Minh, Nguyet
Nguyen Quang, Huy
Phung Khanh, Lam
Dong Thi Hoai, Tam
Dinh The, Trung
Huynh Trung, Trieu
Wills, Bridget
Simmons, Cameron P.
Holmes, Alison H.
Yacoub, Sophie
Georgiou, Pantelis
Learning meaningful latent space representations for patient risk stratification: Model development and validation for dengue and other acute febrile illness
title Learning meaningful latent space representations for patient risk stratification: Model development and validation for dengue and other acute febrile illness
title_full Learning meaningful latent space representations for patient risk stratification: Model development and validation for dengue and other acute febrile illness
title_fullStr Learning meaningful latent space representations for patient risk stratification: Model development and validation for dengue and other acute febrile illness
title_full_unstemmed Learning meaningful latent space representations for patient risk stratification: Model development and validation for dengue and other acute febrile illness
title_short Learning meaningful latent space representations for patient risk stratification: Model development and validation for dengue and other acute febrile illness
title_sort learning meaningful latent space representations for patient risk stratification: model development and validation for dengue and other acute febrile illness
topic Digital Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9992802/
https://www.ncbi.nlm.nih.gov/pubmed/36910574
http://dx.doi.org/10.3389/fdgth.2023.1057467
work_keys_str_mv AT hernandezbernard learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT stiffoliver learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT mingdamienk learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT hoquangchanh learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT nguyenlamvuong learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT nguyenminhtuan learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT nguyenvanvinhchau learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT nguyenminhnguyet learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT nguyenquanghuy learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT phungkhanhlam learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT dongthihoaitam learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT dinhthetrung learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT huynhtrungtrieu learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT willsbridget learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT simmonscameronp learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT holmesalisonh learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT yacoubsophie learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT georgioupantelis learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness
AT learningmeaningfullatentspacerepresentationsforpatientriskstratificationmodeldevelopmentandvalidationfordengueandotheracutefebrileillness