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- Title
Radiomics With Ensemble Machine Learning Predicts Dopamine Agonist Response in Patients With Prolactinoma.
- Authors
Yae Won Park; Jihwan Eom; Sooyon Kim; Hwiyoung Kim; Sung Soo Ahn; Cheol Ryong Ku; Eui Hyun Kim; Eun Jig Lee; Sun Ho Kim; Seung-Koo Lee; Park, Yae Won; Eom, Jihwan; Kim, Sooyon; Kim, Hwiyoung; Ahn, Sung Soo; Ku, Cheol Ryong; Kim, Eui Hyun; Lee, Eun Jig; Kim, Sun Ho; Lee, Seung-Koo
- Abstract
<bold>Context: </bold>Early identification of the response of prolactinoma patients to dopamine agonists (DA) is crucial in treatment planning.<bold>Objective: </bold>To develop a radiomics model using an ensemble machine learning classifier with conventional magnetic resonance images (MRIs) to predict the DA response in prolactinoma patients.<bold>Design: </bold>Retrospective study.<bold>Setting: </bold>Severance Hospital, Seoul, Korea.<bold>Patients: </bold>A total of 177 prolactinoma patients who underwent baseline MRI (109 DA responders and 68 DA nonresponders) were allocated to the training (n = 141) and test (n = 36) sets. Radiomic features (n = 107) were extracted from coronal T2-weighed MRIs. After feature selection, single models (random forest, light gradient boosting machine, extra-trees, quadratic discrimination analysis, and linear discrimination analysis) with oversampling methods were trained to predict the DA response. A soft voting ensemble classifier was used to achieve the final performance. The performance of the classifier was validated in the test set.<bold>Results: </bold>The ensemble classifier showed an area under the curve (AUC) of 0.81 [95% confidence interval (CI), 0.74-0.87] in the training set. In the test set, the ensemble classifier showed an AUC, accuracy, sensitivity, and specificity of 0.81 (95% CI, 0.67-0.96), 77.8%, 78.6%, and 77.3%, respectively. The ensemble classifier achieved the highest performance among all the individual models in the test set.<bold>Conclusions: </bold>Radiomic features may be useful biomarkers to predict the DA response in prolactinoma patients.
- Subjects
RADIOMICS; MACHINE learning; DOPAMINE agonists; PROLACTINOMA; MAGNETIC resonance imaging; THERAPEUTIC use of antineoplastic agents; RESEARCH; RESEARCH methodology; PROGNOSIS; RETROSPECTIVE studies; MEDICAL cooperation; EVALUATION research; TREATMENT effectiveness; COMPARATIVE studies; PITUITARY tumors; RESEARCH funding
- Publication
Journal of Clinical Endocrinology & Metabolism, 2021, Vol 106, Issue 8, pe3069
- ISSN
0021-972X
- Publication type
journal article
- DOI
10.1210/clinem/dgab159