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Clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome

BACKGROUND: Multicolor flow cytometry (MFC) analysis is widely used to identify minimal residual disease (MRD) after treatment for acute myeloid leukemia (AML) and myelodysplastic syndrome (MDS). However, current manual interpretation suffers from drawbacks of time consuming and interpreter idiosync...

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Autores principales: Ko, Bor-Sheng, Wang, Yu-Fen, Li, Jeng-Lin, Li, Chi-Cheng, Weng, Pei-Fang, Hsu, Szu-Chun, Hou, Hsin-An, Huang, Huai-Hsuan, Yao, Ming, Lin, Chien-Ting, Liu, Jia-Hau, Tsai, Cheng-Hong, Huang, Tai-Chung, Wu, Shang-Ju, Huang, Shang-Yi, Chou, Wen-Chien, Tien, Hwei-Fang, Lee, Chi-Chun, Tang, Jih-Luh
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6284584/
https://www.ncbi.nlm.nih.gov/pubmed/30361063
http://dx.doi.org/10.1016/j.ebiom.2018.10.042
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author Ko, Bor-Sheng
Wang, Yu-Fen
Li, Jeng-Lin
Li, Chi-Cheng
Weng, Pei-Fang
Hsu, Szu-Chun
Hou, Hsin-An
Huang, Huai-Hsuan
Yao, Ming
Lin, Chien-Ting
Liu, Jia-Hau
Tsai, Cheng-Hong
Huang, Tai-Chung
Wu, Shang-Ju
Huang, Shang-Yi
Chou, Wen-Chien
Tien, Hwei-Fang
Lee, Chi-Chun
Tang, Jih-Luh
author_facet Ko, Bor-Sheng
Wang, Yu-Fen
Li, Jeng-Lin
Li, Chi-Cheng
Weng, Pei-Fang
Hsu, Szu-Chun
Hou, Hsin-An
Huang, Huai-Hsuan
Yao, Ming
Lin, Chien-Ting
Liu, Jia-Hau
Tsai, Cheng-Hong
Huang, Tai-Chung
Wu, Shang-Ju
Huang, Shang-Yi
Chou, Wen-Chien
Tien, Hwei-Fang
Lee, Chi-Chun
Tang, Jih-Luh
author_sort Ko, Bor-Sheng
collection PubMed
description BACKGROUND: Multicolor flow cytometry (MFC) analysis is widely used to identify minimal residual disease (MRD) after treatment for acute myeloid leukemia (AML) and myelodysplastic syndrome (MDS). However, current manual interpretation suffers from drawbacks of time consuming and interpreter idiosyncrasy. Artificial intelligence (AI), with the expertise in assisting repetitive or complex analysis, represents a potential solution for these drawbacks. METHODS: From 2009 to 2016, 5333 MFC data from 1742 AML or MDS patients were collected. The 287 MFC data at post-induction were selected as the outcome set for clinical outcome validation. The rest were 4:1 randomized into the training set (n = 4039) and the validation set (n = 1007). AI algorithm learned a multi-dimensional MFC phenotype from the training set and input it to support vector machine (SVM) classifier after Gaussian mixture model (GMM) modeling, and the performance was evaluated in The validation set. FINDINGS: Promising accuracies (84·6% to 92·4%) and AUCs (0·921–0·950) were achieved by the developed algorithms. Interestingly, the algorithm from even one testing tube achieved similar performance. The clinical significance was validated in the outcome set, and normal MFC interpreted by the AI predicted better progression-free survival (10·9 vs 4·9 months, p < 0·0001) and overall survival (13·6 vs 6·5 months, p < 0·0001) for AML. INTERPRETATION: Through large-scaled clinical validation, we showed that AI algorithms can produce efficient and clinically-relevant MFC analysis. This approach also possesses a great advantage of the ability to integrate other clinical tests. FUND: This work was supported by the Ministry of Science and Technology (107-2634-F-007-006 and 103–2314-B-002-185-MY2) of Taiwan.
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spelling pubmed-62845842018-12-13 Clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome Ko, Bor-Sheng Wang, Yu-Fen Li, Jeng-Lin Li, Chi-Cheng Weng, Pei-Fang Hsu, Szu-Chun Hou, Hsin-An Huang, Huai-Hsuan Yao, Ming Lin, Chien-Ting Liu, Jia-Hau Tsai, Cheng-Hong Huang, Tai-Chung Wu, Shang-Ju Huang, Shang-Yi Chou, Wen-Chien Tien, Hwei-Fang Lee, Chi-Chun Tang, Jih-Luh EBioMedicine Research paper BACKGROUND: Multicolor flow cytometry (MFC) analysis is widely used to identify minimal residual disease (MRD) after treatment for acute myeloid leukemia (AML) and myelodysplastic syndrome (MDS). However, current manual interpretation suffers from drawbacks of time consuming and interpreter idiosyncrasy. Artificial intelligence (AI), with the expertise in assisting repetitive or complex analysis, represents a potential solution for these drawbacks. METHODS: From 2009 to 2016, 5333 MFC data from 1742 AML or MDS patients were collected. The 287 MFC data at post-induction were selected as the outcome set for clinical outcome validation. The rest were 4:1 randomized into the training set (n = 4039) and the validation set (n = 1007). AI algorithm learned a multi-dimensional MFC phenotype from the training set and input it to support vector machine (SVM) classifier after Gaussian mixture model (GMM) modeling, and the performance was evaluated in The validation set. FINDINGS: Promising accuracies (84·6% to 92·4%) and AUCs (0·921–0·950) were achieved by the developed algorithms. Interestingly, the algorithm from even one testing tube achieved similar performance. The clinical significance was validated in the outcome set, and normal MFC interpreted by the AI predicted better progression-free survival (10·9 vs 4·9 months, p < 0·0001) and overall survival (13·6 vs 6·5 months, p < 0·0001) for AML. INTERPRETATION: Through large-scaled clinical validation, we showed that AI algorithms can produce efficient and clinically-relevant MFC analysis. This approach also possesses a great advantage of the ability to integrate other clinical tests. FUND: This work was supported by the Ministry of Science and Technology (107-2634-F-007-006 and 103–2314-B-002-185-MY2) of Taiwan. Elsevier 2018-10-22 /pmc/articles/PMC6284584/ /pubmed/30361063 http://dx.doi.org/10.1016/j.ebiom.2018.10.042 Text en © 2018 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research paper
Ko, Bor-Sheng
Wang, Yu-Fen
Li, Jeng-Lin
Li, Chi-Cheng
Weng, Pei-Fang
Hsu, Szu-Chun
Hou, Hsin-An
Huang, Huai-Hsuan
Yao, Ming
Lin, Chien-Ting
Liu, Jia-Hau
Tsai, Cheng-Hong
Huang, Tai-Chung
Wu, Shang-Ju
Huang, Shang-Yi
Chou, Wen-Chien
Tien, Hwei-Fang
Lee, Chi-Chun
Tang, Jih-Luh
Clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome
title Clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome
title_full Clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome
title_fullStr Clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome
title_full_unstemmed Clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome
title_short Clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome
title_sort clinically validated machine learning algorithm for detecting residual diseases with multicolor flow cytometry analysis in acute myeloid leukemia and myelodysplastic syndrome
topic Research paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6284584/
https://www.ncbi.nlm.nih.gov/pubmed/30361063
http://dx.doi.org/10.1016/j.ebiom.2018.10.042
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