Cargando…

Multi-modality machine learning predicting Parkinson’s disease

Personalized medicine promises individualized disease prediction and treatment. The convergence of machine learning (ML) and available multimodal data is key moving forward. We build upon previous work to deliver multimodal predictions of Parkinson’s disease (PD) risk and systematically develop a mo...

Descripción completa

Detalles Bibliográficos
Autores principales: Makarious, Mary B., Leonard, Hampton L., Vitale, Dan, Iwaki, Hirotaka, Sargent, Lana, Dadu, Anant, Violich, Ivo, Hutchins, Elizabeth, Saffo, David, Bandres-Ciga, Sara, Kim, Jonggeol Jeff, Song, Yeajin, Maleknia, Melina, Bookman, Matt, Nojopranoto, Willy, Campbell, Roy H., Hashemi, Sayed Hadi, Botia, Juan A., Carter, John F., Craig, David W., Van Keuren-Jensen, Kendall, Morris, Huw R., Hardy, John A., Blauwendraat, Cornelis, Singleton, Andrew B., Faghri, Faraz, Nalls, Mike A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8975993/
https://www.ncbi.nlm.nih.gov/pubmed/35365675
http://dx.doi.org/10.1038/s41531-022-00288-w
_version_ 1784680472669847552
author Makarious, Mary B.
Leonard, Hampton L.
Vitale, Dan
Iwaki, Hirotaka
Sargent, Lana
Dadu, Anant
Violich, Ivo
Hutchins, Elizabeth
Saffo, David
Bandres-Ciga, Sara
Kim, Jonggeol Jeff
Song, Yeajin
Maleknia, Melina
Bookman, Matt
Nojopranoto, Willy
Campbell, Roy H.
Hashemi, Sayed Hadi
Botia, Juan A.
Carter, John F.
Craig, David W.
Van Keuren-Jensen, Kendall
Morris, Huw R.
Hardy, John A.
Blauwendraat, Cornelis
Singleton, Andrew B.
Faghri, Faraz
Nalls, Mike A.
author_facet Makarious, Mary B.
Leonard, Hampton L.
Vitale, Dan
Iwaki, Hirotaka
Sargent, Lana
Dadu, Anant
Violich, Ivo
Hutchins, Elizabeth
Saffo, David
Bandres-Ciga, Sara
Kim, Jonggeol Jeff
Song, Yeajin
Maleknia, Melina
Bookman, Matt
Nojopranoto, Willy
Campbell, Roy H.
Hashemi, Sayed Hadi
Botia, Juan A.
Carter, John F.
Craig, David W.
Van Keuren-Jensen, Kendall
Morris, Huw R.
Hardy, John A.
Blauwendraat, Cornelis
Singleton, Andrew B.
Faghri, Faraz
Nalls, Mike A.
author_sort Makarious, Mary B.
collection PubMed
description Personalized medicine promises individualized disease prediction and treatment. The convergence of machine learning (ML) and available multimodal data is key moving forward. We build upon previous work to deliver multimodal predictions of Parkinson’s disease (PD) risk and systematically develop a model using GenoML, an automated ML package, to make improved multi-omic predictions of PD, validated in an external cohort. We investigated top features, constructed hypothesis-free disease-relevant networks, and investigated drug–gene interactions. We performed automated ML on multimodal data from the Parkinson’s progression marker initiative (PPMI). After selecting the best performing algorithm, all PPMI data was used to tune the selected model. The model was validated in the Parkinson’s Disease Biomarker Program (PDBP) dataset. Our initial model showed an area under the curve (AUC) of 89.72% for the diagnosis of PD. The tuned model was then tested for validation on external data (PDBP, AUC 85.03%). Optimizing thresholds for classification increased the diagnosis prediction accuracy and other metrics. Finally, networks were built to identify gene communities specific to PD. Combining data modalities outperforms the single biomarker paradigm. UPSIT and PRS contributed most to the predictive power of the model, but the accuracy of these are supplemented by many smaller effect transcripts and risk SNPs. Our model is best suited to identifying large groups of individuals to monitor within a health registry or biobank to prioritize for further testing. This approach allows complex predictive models to be reproducible and accessible to the community, with the package, code, and results publicly available.
format Online
Article
Text
id pubmed-8975993
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-89759932022-04-20 Multi-modality machine learning predicting Parkinson’s disease Makarious, Mary B. Leonard, Hampton L. Vitale, Dan Iwaki, Hirotaka Sargent, Lana Dadu, Anant Violich, Ivo Hutchins, Elizabeth Saffo, David Bandres-Ciga, Sara Kim, Jonggeol Jeff Song, Yeajin Maleknia, Melina Bookman, Matt Nojopranoto, Willy Campbell, Roy H. Hashemi, Sayed Hadi Botia, Juan A. Carter, John F. Craig, David W. Van Keuren-Jensen, Kendall Morris, Huw R. Hardy, John A. Blauwendraat, Cornelis Singleton, Andrew B. Faghri, Faraz Nalls, Mike A. NPJ Parkinsons Dis Article Personalized medicine promises individualized disease prediction and treatment. The convergence of machine learning (ML) and available multimodal data is key moving forward. We build upon previous work to deliver multimodal predictions of Parkinson’s disease (PD) risk and systematically develop a model using GenoML, an automated ML package, to make improved multi-omic predictions of PD, validated in an external cohort. We investigated top features, constructed hypothesis-free disease-relevant networks, and investigated drug–gene interactions. We performed automated ML on multimodal data from the Parkinson’s progression marker initiative (PPMI). After selecting the best performing algorithm, all PPMI data was used to tune the selected model. The model was validated in the Parkinson’s Disease Biomarker Program (PDBP) dataset. Our initial model showed an area under the curve (AUC) of 89.72% for the diagnosis of PD. The tuned model was then tested for validation on external data (PDBP, AUC 85.03%). Optimizing thresholds for classification increased the diagnosis prediction accuracy and other metrics. Finally, networks were built to identify gene communities specific to PD. Combining data modalities outperforms the single biomarker paradigm. UPSIT and PRS contributed most to the predictive power of the model, but the accuracy of these are supplemented by many smaller effect transcripts and risk SNPs. Our model is best suited to identifying large groups of individuals to monitor within a health registry or biobank to prioritize for further testing. This approach allows complex predictive models to be reproducible and accessible to the community, with the package, code, and results publicly available. Nature Publishing Group UK 2022-04-01 /pmc/articles/PMC8975993/ /pubmed/35365675 http://dx.doi.org/10.1038/s41531-022-00288-w Text en © This is a U.S. government work and not under copyright protection in the U.S.; foreign copyright protection may apply 2022 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Makarious, Mary B.
Leonard, Hampton L.
Vitale, Dan
Iwaki, Hirotaka
Sargent, Lana
Dadu, Anant
Violich, Ivo
Hutchins, Elizabeth
Saffo, David
Bandres-Ciga, Sara
Kim, Jonggeol Jeff
Song, Yeajin
Maleknia, Melina
Bookman, Matt
Nojopranoto, Willy
Campbell, Roy H.
Hashemi, Sayed Hadi
Botia, Juan A.
Carter, John F.
Craig, David W.
Van Keuren-Jensen, Kendall
Morris, Huw R.
Hardy, John A.
Blauwendraat, Cornelis
Singleton, Andrew B.
Faghri, Faraz
Nalls, Mike A.
Multi-modality machine learning predicting Parkinson’s disease
title Multi-modality machine learning predicting Parkinson’s disease
title_full Multi-modality machine learning predicting Parkinson’s disease
title_fullStr Multi-modality machine learning predicting Parkinson’s disease
title_full_unstemmed Multi-modality machine learning predicting Parkinson’s disease
title_short Multi-modality machine learning predicting Parkinson’s disease
title_sort multi-modality machine learning predicting parkinson’s disease
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8975993/
https://www.ncbi.nlm.nih.gov/pubmed/35365675
http://dx.doi.org/10.1038/s41531-022-00288-w
work_keys_str_mv AT makariousmaryb multimodalitymachinelearningpredictingparkinsonsdisease
AT leonardhamptonl multimodalitymachinelearningpredictingparkinsonsdisease
AT vitaledan multimodalitymachinelearningpredictingparkinsonsdisease
AT iwakihirotaka multimodalitymachinelearningpredictingparkinsonsdisease
AT sargentlana multimodalitymachinelearningpredictingparkinsonsdisease
AT daduanant multimodalitymachinelearningpredictingparkinsonsdisease
AT violichivo multimodalitymachinelearningpredictingparkinsonsdisease
AT hutchinselizabeth multimodalitymachinelearningpredictingparkinsonsdisease
AT saffodavid multimodalitymachinelearningpredictingparkinsonsdisease
AT bandrescigasara multimodalitymachinelearningpredictingparkinsonsdisease
AT kimjonggeoljeff multimodalitymachinelearningpredictingparkinsonsdisease
AT songyeajin multimodalitymachinelearningpredictingparkinsonsdisease
AT malekniamelina multimodalitymachinelearningpredictingparkinsonsdisease
AT bookmanmatt multimodalitymachinelearningpredictingparkinsonsdisease
AT nojopranotowilly multimodalitymachinelearningpredictingparkinsonsdisease
AT campbellroyh multimodalitymachinelearningpredictingparkinsonsdisease
AT hashemisayedhadi multimodalitymachinelearningpredictingparkinsonsdisease
AT botiajuana multimodalitymachinelearningpredictingparkinsonsdisease
AT carterjohnf multimodalitymachinelearningpredictingparkinsonsdisease
AT craigdavidw multimodalitymachinelearningpredictingparkinsonsdisease
AT vankeurenjensenkendall multimodalitymachinelearningpredictingparkinsonsdisease
AT morrishuwr multimodalitymachinelearningpredictingparkinsonsdisease
AT hardyjohna multimodalitymachinelearningpredictingparkinsonsdisease
AT blauwendraatcornelis multimodalitymachinelearningpredictingparkinsonsdisease
AT singletonandrewb multimodalitymachinelearningpredictingparkinsonsdisease
AT faghrifaraz multimodalitymachinelearningpredictingparkinsonsdisease
AT nallsmikea multimodalitymachinelearningpredictingparkinsonsdisease