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Identifying KCNJ5 Mutation in Aldosterone-Producing Adenoma Patients With Baseline Characteristics Using Machine Learning Technology

BACKGROUND: Primary aldosteronism is characterized by inappropriate aldosterone production, and unilateral aldosterone-producing adenoma (uPA) is a common type of PA. KCNJ5 mutation is a protective factor in uPA; however, there is no preoperative approach to detect KCNJ5 mutation in patients with uP...

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Autores principales: Chen, Li-Chin, Huang, Wei-Chieh, Peng, Kang-Yung, Chen, Ying-Ying, Li, Szu-Chang, Syed Mohammed Nazri, Siti Khadijah, Lin, Yen-Hung, Lin, Liang-Yu, Lu, Tse-Min, Kim, Jung Hee, Azizan, Elena Aisha, Hu, Jinbo, Li, Qifu, Chueh, Jeff S., Wu, Vin-Cent
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10442871/
https://www.ncbi.nlm.nih.gov/pubmed/37614534
http://dx.doi.org/10.1016/j.jacasi.2023.03.010
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author Chen, Li-Chin
Huang, Wei-Chieh
Peng, Kang-Yung
Chen, Ying-Ying
Li, Szu-Chang
Syed Mohammed Nazri, Siti Khadijah
Lin, Yen-Hung
Lin, Liang-Yu
Lu, Tse-Min
Kim, Jung Hee
Azizan, Elena Aisha
Hu, Jinbo
Li, Qifu
Chueh, Jeff S.
Wu, Vin-Cent
author_facet Chen, Li-Chin
Huang, Wei-Chieh
Peng, Kang-Yung
Chen, Ying-Ying
Li, Szu-Chang
Syed Mohammed Nazri, Siti Khadijah
Lin, Yen-Hung
Lin, Liang-Yu
Lu, Tse-Min
Kim, Jung Hee
Azizan, Elena Aisha
Hu, Jinbo
Li, Qifu
Chueh, Jeff S.
Wu, Vin-Cent
author_sort Chen, Li-Chin
collection PubMed
description BACKGROUND: Primary aldosteronism is characterized by inappropriate aldosterone production, and unilateral aldosterone-producing adenoma (uPA) is a common type of PA. KCNJ5 mutation is a protective factor in uPA; however, there is no preoperative approach to detect KCNJ5 mutation in patients with uPA. OBJECTIVES: This study aimed to provide a personalized surgical recommendation that enables more confidence in advising patients to pursue surgical treatment. METHODS: We enrolled 328 patients with uPA harboring KCNJ5 mutations (n = 158) or not (n = 170) who had undergone adrenalectomy. Eighty-seven features were collected, including demographics, various blood and urine test results, and clinical comorbidities. We designed 2 versions of the prediction model: one for institutes with complete blood tests (full version), and the other for institutes that may not be equipped with comprehensive testing facilities (condensed version). RESULTS: The results show that in the full version, the Light Gradient Boosting Machine outperformed other classifiers, achieving area under the curve and accuracy values of 0.905 and 0.864, respectively. The Light Gradient Boosting Machine also showed excellent performance in the condensed version, achieving area under the curve and accuracy values of 0.867 and 0.803, respectively. CONCLUSIONS: We simplified the preoperative diagnosis of KCNJ5 mutations successfully using machine learning. The proposed lightweight tool that requires only baseline characteristics and blood/urine test results can be widely applied and can aid personalized prediction during preoperative counseling for patients with uPA.
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spelling pubmed-104428712023-08-23 Identifying KCNJ5 Mutation in Aldosterone-Producing Adenoma Patients With Baseline Characteristics Using Machine Learning Technology Chen, Li-Chin Huang, Wei-Chieh Peng, Kang-Yung Chen, Ying-Ying Li, Szu-Chang Syed Mohammed Nazri, Siti Khadijah Lin, Yen-Hung Lin, Liang-Yu Lu, Tse-Min Kim, Jung Hee Azizan, Elena Aisha Hu, Jinbo Li, Qifu Chueh, Jeff S. Wu, Vin-Cent JACC Asia Original Research BACKGROUND: Primary aldosteronism is characterized by inappropriate aldosterone production, and unilateral aldosterone-producing adenoma (uPA) is a common type of PA. KCNJ5 mutation is a protective factor in uPA; however, there is no preoperative approach to detect KCNJ5 mutation in patients with uPA. OBJECTIVES: This study aimed to provide a personalized surgical recommendation that enables more confidence in advising patients to pursue surgical treatment. METHODS: We enrolled 328 patients with uPA harboring KCNJ5 mutations (n = 158) or not (n = 170) who had undergone adrenalectomy. Eighty-seven features were collected, including demographics, various blood and urine test results, and clinical comorbidities. We designed 2 versions of the prediction model: one for institutes with complete blood tests (full version), and the other for institutes that may not be equipped with comprehensive testing facilities (condensed version). RESULTS: The results show that in the full version, the Light Gradient Boosting Machine outperformed other classifiers, achieving area under the curve and accuracy values of 0.905 and 0.864, respectively. The Light Gradient Boosting Machine also showed excellent performance in the condensed version, achieving area under the curve and accuracy values of 0.867 and 0.803, respectively. CONCLUSIONS: We simplified the preoperative diagnosis of KCNJ5 mutations successfully using machine learning. The proposed lightweight tool that requires only baseline characteristics and blood/urine test results can be widely applied and can aid personalized prediction during preoperative counseling for patients with uPA. Elsevier 2023-06-13 /pmc/articles/PMC10442871/ /pubmed/37614534 http://dx.doi.org/10.1016/j.jacasi.2023.03.010 Text en © 2023 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Original Research
Chen, Li-Chin
Huang, Wei-Chieh
Peng, Kang-Yung
Chen, Ying-Ying
Li, Szu-Chang
Syed Mohammed Nazri, Siti Khadijah
Lin, Yen-Hung
Lin, Liang-Yu
Lu, Tse-Min
Kim, Jung Hee
Azizan, Elena Aisha
Hu, Jinbo
Li, Qifu
Chueh, Jeff S.
Wu, Vin-Cent
Identifying KCNJ5 Mutation in Aldosterone-Producing Adenoma Patients With Baseline Characteristics Using Machine Learning Technology
title Identifying KCNJ5 Mutation in Aldosterone-Producing Adenoma Patients With Baseline Characteristics Using Machine Learning Technology
title_full Identifying KCNJ5 Mutation in Aldosterone-Producing Adenoma Patients With Baseline Characteristics Using Machine Learning Technology
title_fullStr Identifying KCNJ5 Mutation in Aldosterone-Producing Adenoma Patients With Baseline Characteristics Using Machine Learning Technology
title_full_unstemmed Identifying KCNJ5 Mutation in Aldosterone-Producing Adenoma Patients With Baseline Characteristics Using Machine Learning Technology
title_short Identifying KCNJ5 Mutation in Aldosterone-Producing Adenoma Patients With Baseline Characteristics Using Machine Learning Technology
title_sort identifying kcnj5 mutation in aldosterone-producing adenoma patients with baseline characteristics using machine learning technology
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10442871/
https://www.ncbi.nlm.nih.gov/pubmed/37614534
http://dx.doi.org/10.1016/j.jacasi.2023.03.010
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