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Development of a Machine Learning Model to Predict Non-Durable Response to Anti-TNF Therapy in Crohn’s Disease Using Transcriptome Imputed from Genotypes

Almost half of patients show no primary or secondary response to monoclonal anti-tumor necrosis factor α (anti-TNF) antibody treatment for inflammatory bowel disease (IBD). Thus, the exact mechanisms of a non-durable response (NDR) remain inadequately defined. We used our genome-wide genotype data t...

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Autores principales: Park, Soo Kyung, Kim, Yea Bean, Kim, Sangsoo, Lee, Chil Woo, Choi, Chang Hwan, Kang, Sang-Bum, Kim, Tae Oh, Bang, Ki Bae, Chun, Jaeyoung, Cha, Jae Myung, Im, Jong Pil, Kim, Min Suk, Ahn, Kwang Sung, Kim, Seon-Young, Park, Dong Il
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9224874/
https://www.ncbi.nlm.nih.gov/pubmed/35743732
http://dx.doi.org/10.3390/jpm12060947
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author Park, Soo Kyung
Kim, Yea Bean
Kim, Sangsoo
Lee, Chil Woo
Choi, Chang Hwan
Kang, Sang-Bum
Kim, Tae Oh
Bang, Ki Bae
Chun, Jaeyoung
Cha, Jae Myung
Im, Jong Pil
Kim, Min Suk
Ahn, Kwang Sung
Kim, Seon-Young
Park, Dong Il
author_facet Park, Soo Kyung
Kim, Yea Bean
Kim, Sangsoo
Lee, Chil Woo
Choi, Chang Hwan
Kang, Sang-Bum
Kim, Tae Oh
Bang, Ki Bae
Chun, Jaeyoung
Cha, Jae Myung
Im, Jong Pil
Kim, Min Suk
Ahn, Kwang Sung
Kim, Seon-Young
Park, Dong Il
author_sort Park, Soo Kyung
collection PubMed
description Almost half of patients show no primary or secondary response to monoclonal anti-tumor necrosis factor α (anti-TNF) antibody treatment for inflammatory bowel disease (IBD). Thus, the exact mechanisms of a non-durable response (NDR) remain inadequately defined. We used our genome-wide genotype data to impute expression values as features in training machine learning models to predict a NDR. Blood samples from various IBD cohorts were used for genotyping with the Korea Biobank Array. A total of 234 patients with Crohn’s disease (CD) who received their first anti-TNF therapy were enrolled. The expression profiles of 6294 genes in whole-blood tissue imputed from the genotype data were combined with clinical parameters to train a logistic model to predict the NDR. The top two and three most significant features were genetic features (DPY19L3, GSTT1, and NUCB1), not clinical features. The logistic regression of the NDR vs. DR status in our cohort by the imputed expression levels showed that the β coefficients were positive for DPY19L3 and GSTT1, and negative for NUCB1, concordant with the known eQTL information. Machine learning models using imputed gene expression features effectively predicted NDR to anti-TNF agents in patients with CD.
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spelling pubmed-92248742022-06-24 Development of a Machine Learning Model to Predict Non-Durable Response to Anti-TNF Therapy in Crohn’s Disease Using Transcriptome Imputed from Genotypes Park, Soo Kyung Kim, Yea Bean Kim, Sangsoo Lee, Chil Woo Choi, Chang Hwan Kang, Sang-Bum Kim, Tae Oh Bang, Ki Bae Chun, Jaeyoung Cha, Jae Myung Im, Jong Pil Kim, Min Suk Ahn, Kwang Sung Kim, Seon-Young Park, Dong Il J Pers Med Article Almost half of patients show no primary or secondary response to monoclonal anti-tumor necrosis factor α (anti-TNF) antibody treatment for inflammatory bowel disease (IBD). Thus, the exact mechanisms of a non-durable response (NDR) remain inadequately defined. We used our genome-wide genotype data to impute expression values as features in training machine learning models to predict a NDR. Blood samples from various IBD cohorts were used for genotyping with the Korea Biobank Array. A total of 234 patients with Crohn’s disease (CD) who received their first anti-TNF therapy were enrolled. The expression profiles of 6294 genes in whole-blood tissue imputed from the genotype data were combined with clinical parameters to train a logistic model to predict the NDR. The top two and three most significant features were genetic features (DPY19L3, GSTT1, and NUCB1), not clinical features. The logistic regression of the NDR vs. DR status in our cohort by the imputed expression levels showed that the β coefficients were positive for DPY19L3 and GSTT1, and negative for NUCB1, concordant with the known eQTL information. Machine learning models using imputed gene expression features effectively predicted NDR to anti-TNF agents in patients with CD. MDPI 2022-06-09 /pmc/articles/PMC9224874/ /pubmed/35743732 http://dx.doi.org/10.3390/jpm12060947 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Park, Soo Kyung
Kim, Yea Bean
Kim, Sangsoo
Lee, Chil Woo
Choi, Chang Hwan
Kang, Sang-Bum
Kim, Tae Oh
Bang, Ki Bae
Chun, Jaeyoung
Cha, Jae Myung
Im, Jong Pil
Kim, Min Suk
Ahn, Kwang Sung
Kim, Seon-Young
Park, Dong Il
Development of a Machine Learning Model to Predict Non-Durable Response to Anti-TNF Therapy in Crohn’s Disease Using Transcriptome Imputed from Genotypes
title Development of a Machine Learning Model to Predict Non-Durable Response to Anti-TNF Therapy in Crohn’s Disease Using Transcriptome Imputed from Genotypes
title_full Development of a Machine Learning Model to Predict Non-Durable Response to Anti-TNF Therapy in Crohn’s Disease Using Transcriptome Imputed from Genotypes
title_fullStr Development of a Machine Learning Model to Predict Non-Durable Response to Anti-TNF Therapy in Crohn’s Disease Using Transcriptome Imputed from Genotypes
title_full_unstemmed Development of a Machine Learning Model to Predict Non-Durable Response to Anti-TNF Therapy in Crohn’s Disease Using Transcriptome Imputed from Genotypes
title_short Development of a Machine Learning Model to Predict Non-Durable Response to Anti-TNF Therapy in Crohn’s Disease Using Transcriptome Imputed from Genotypes
title_sort development of a machine learning model to predict non-durable response to anti-tnf therapy in crohn’s disease using transcriptome imputed from genotypes
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9224874/
https://www.ncbi.nlm.nih.gov/pubmed/35743732
http://dx.doi.org/10.3390/jpm12060947
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