A machine learning model to precisely immunohistochemically classify pituitary adenoma subtypes with radiomics based on preoperative magnetic resonance imaging

•SVM model could precisely classify pituitary adenoma (PA) subtypes.•Each MR sequence of each type of PA had its own characteristics.•The performance of T2 sequence was better than that of the other two MR sequences.•This model could offer neurosurgeons and patients useful suggestions before surgery...

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Veröffentlicht in:European journal of radiology 2020-04, Vol.125, p.108892-108892, Article 108892
Hauptverfasser: Peng, AiJun, Dai, HuMing, Duan, HaiHan, Chen, YaXing, Huang, JianHan, Zhou, LiangXue, Chen, LiangYin
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Sprache:eng
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Zusammenfassung:•SVM model could precisely classify pituitary adenoma (PA) subtypes.•Each MR sequence of each type of PA had its own characteristics.•The performance of T2 sequence was better than that of the other two MR sequences.•This model could offer neurosurgeons and patients useful suggestions before surgery. The type of pituitary adenoma (PA) cannot be clearly recognized with preoperative magnetic resonance imaging (MRI) but can be classified with immunohistochemical staining after surgery. In this study, a model to precisely immunohistochemically classify the PA subtypes by radiomic features based on preoperative MR images was developed. Two hundred thirty-five pathologically diagnosed PAs, including t-box pituitary transcription factor (Tpit) family tumors (n = 55), pituitary transcription factor 1 (Pit-1) family tumors (n = 110), and steroidogenic factor 1 (SF-1) family tumors (n = 70), were retrospectively studied. T1-weighted, T2-weighted and contrast-enhanced T1-weighted images were obtained from all patients. Through imaging acquisition, feature extraction and radiomic data processing, 18 radiomic features were used to train support vector machine (SVM), k-nearest neighbors (KNN) and Naïve Bayes (NBs) models. Ten-fold cross-validation was applied to evaluate the performance of these models. The SVM model showed high performance (balanced accuracy 0.89, AUC 0.9549) whereas the KNN (balanced accuracy 0.83, AUC 0.9266) and NBs (balanced accuracy 0.80, AUC 0.9324) models displayed low performance based on the T2-weighted images. The performance of the T2-weighted images was better than that of the other two MR sequences. Additionally, significant sensitivity (P = 0.031) and specificity (P = 0.012) differences were observed when classifying the PA subtypes by T2-weighted images. The SVM model was superior to the KNN and NBs models and can potentially precisely immunohistochemically classify PA subtypes with an MR-based radiomic analysis. The developed model exhibited good performance using T2-weighted images and might offer potential guidance to neurosurgeons in clinical decision-making before surgery.
ISSN:0720-048X
1872-7727
DOI:10.1016/j.ejrad.2020.108892