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Genomic Biomarkers to Predict Resistance to Hypomethylating Agents in Patients With Myelodysplastic Syndromes Using Artificial Intelligence
PURPOSE: We developed an unbiased framework to study the association of several mutations in predicting resistance to hypomethylating agents (HMAs) in patients with myelodysplastic syndromes (MDS), analogous to consumer and commercial recommender systems in which customers who bought products A and...
Autores principales: | , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
American Society of Clinical Oncology
2019
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6818517/ https://www.ncbi.nlm.nih.gov/pubmed/31663066 http://dx.doi.org/10.1200/PO.19.00119 |
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author | Nazha, Aziz Sekeres, Mikkael A. Bejar, Rafael Rauh, Michael J. Othus, Megan Komrokji, Rami S. Barnard, John Hilton, Cameron B. Kerr, Cassandra M. Steensma, David P. DeZern, Amy Roboz, Gail Garcia-Manero, Guillermo Erba, Harry Ebert, Benjamin L. Maciejewski, Jaroslaw P. |
author_facet | Nazha, Aziz Sekeres, Mikkael A. Bejar, Rafael Rauh, Michael J. Othus, Megan Komrokji, Rami S. Barnard, John Hilton, Cameron B. Kerr, Cassandra M. Steensma, David P. DeZern, Amy Roboz, Gail Garcia-Manero, Guillermo Erba, Harry Ebert, Benjamin L. Maciejewski, Jaroslaw P. |
author_sort | Nazha, Aziz |
collection | PubMed |
description | PURPOSE: We developed an unbiased framework to study the association of several mutations in predicting resistance to hypomethylating agents (HMAs) in patients with myelodysplastic syndromes (MDS), analogous to consumer and commercial recommender systems in which customers who bought products A and B are likely to buy C: patients who have a mutation in gene A and gene B are likely to respond or not respond to HMAs. METHODS: We screened a cohort of 433 patients with MDS who received HMAs for the presence of common myeloid mutations in 29 genes that were obtained before the patients started therapy. The association between mutations and response was evaluated by the Apriori market basket analysis algorithm. Rules with the highest confidence (confidence that the association exists) and the highest lift (strength of the association) were chosen. We validated our biomarkers in samples from patients enrolled in the S1117 trial. RESULTS: Among 433 patients, 193 (45%) received azacitidine, 176 (40%) received decitabine, and 64 (15%) received HMA alone or in combination. The median age was 70 years (range, 31 to 100 years), and 28% were female. The median number of mutations per sample was three (range, zero to nine), and 176 patients (41%) had three or more mutations per sample. Association rules identified several genomic combinations as being highly associated with no response. These molecular signatures were present in 30% of patients with three or more mutations/sample with an accuracy rate of 87% in the training cohort and 93% in the validation cohort. CONCLUSION: Genomic biomarkers can identify, with high accuracy, approximately one third of patients with MDS who will not respond to HMAs. This study highlights the importance of machine learning technologies such as the recommender system algorithm in translating genomic data into useful clinical tools. |
format | Online Article Text |
id | pubmed-6818517 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2019 |
publisher | American Society of Clinical Oncology |
record_format | MEDLINE/PubMed |
spelling | pubmed-68185172019-10-29 Genomic Biomarkers to Predict Resistance to Hypomethylating Agents in Patients With Myelodysplastic Syndromes Using Artificial Intelligence Nazha, Aziz Sekeres, Mikkael A. Bejar, Rafael Rauh, Michael J. Othus, Megan Komrokji, Rami S. Barnard, John Hilton, Cameron B. Kerr, Cassandra M. Steensma, David P. DeZern, Amy Roboz, Gail Garcia-Manero, Guillermo Erba, Harry Ebert, Benjamin L. Maciejewski, Jaroslaw P. JCO Precis Oncol Original Report PURPOSE: We developed an unbiased framework to study the association of several mutations in predicting resistance to hypomethylating agents (HMAs) in patients with myelodysplastic syndromes (MDS), analogous to consumer and commercial recommender systems in which customers who bought products A and B are likely to buy C: patients who have a mutation in gene A and gene B are likely to respond or not respond to HMAs. METHODS: We screened a cohort of 433 patients with MDS who received HMAs for the presence of common myeloid mutations in 29 genes that were obtained before the patients started therapy. The association between mutations and response was evaluated by the Apriori market basket analysis algorithm. Rules with the highest confidence (confidence that the association exists) and the highest lift (strength of the association) were chosen. We validated our biomarkers in samples from patients enrolled in the S1117 trial. RESULTS: Among 433 patients, 193 (45%) received azacitidine, 176 (40%) received decitabine, and 64 (15%) received HMA alone or in combination. The median age was 70 years (range, 31 to 100 years), and 28% were female. The median number of mutations per sample was three (range, zero to nine), and 176 patients (41%) had three or more mutations per sample. Association rules identified several genomic combinations as being highly associated with no response. These molecular signatures were present in 30% of patients with three or more mutations/sample with an accuracy rate of 87% in the training cohort and 93% in the validation cohort. CONCLUSION: Genomic biomarkers can identify, with high accuracy, approximately one third of patients with MDS who will not respond to HMAs. This study highlights the importance of machine learning technologies such as the recommender system algorithm in translating genomic data into useful clinical tools. American Society of Clinical Oncology 2019-09-20 /pmc/articles/PMC6818517/ /pubmed/31663066 http://dx.doi.org/10.1200/PO.19.00119 Text en © 2019 by American Society of Clinical Oncology https://creativecommons.org/licenses/by/4.0/ Licensed under the Creative Commons Attribution 4.0 License |
spellingShingle | Original Report Nazha, Aziz Sekeres, Mikkael A. Bejar, Rafael Rauh, Michael J. Othus, Megan Komrokji, Rami S. Barnard, John Hilton, Cameron B. Kerr, Cassandra M. Steensma, David P. DeZern, Amy Roboz, Gail Garcia-Manero, Guillermo Erba, Harry Ebert, Benjamin L. Maciejewski, Jaroslaw P. Genomic Biomarkers to Predict Resistance to Hypomethylating Agents in Patients With Myelodysplastic Syndromes Using Artificial Intelligence |
title | Genomic Biomarkers to Predict Resistance to Hypomethylating Agents in Patients With Myelodysplastic Syndromes Using Artificial Intelligence |
title_full | Genomic Biomarkers to Predict Resistance to Hypomethylating Agents in Patients With Myelodysplastic Syndromes Using Artificial Intelligence |
title_fullStr | Genomic Biomarkers to Predict Resistance to Hypomethylating Agents in Patients With Myelodysplastic Syndromes Using Artificial Intelligence |
title_full_unstemmed | Genomic Biomarkers to Predict Resistance to Hypomethylating Agents in Patients With Myelodysplastic Syndromes Using Artificial Intelligence |
title_short | Genomic Biomarkers to Predict Resistance to Hypomethylating Agents in Patients With Myelodysplastic Syndromes Using Artificial Intelligence |
title_sort | genomic biomarkers to predict resistance to hypomethylating agents in patients with myelodysplastic syndromes using artificial intelligence |
topic | Original Report |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6818517/ https://www.ncbi.nlm.nih.gov/pubmed/31663066 http://dx.doi.org/10.1200/PO.19.00119 |
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