Prediction of pituitary adenoma surgical consistency: radiomic data mining and machine learning on T2-weighted MRI

被引:42
|
作者
Cuocolo, Renato [1 ]
Ugga, Lorenzo [1 ]
Solari, Domenico [2 ]
Corvino, Sergio [2 ]
D'Amico, Alessandra [1 ]
Russo, Daniela [1 ]
Cappabianca, Paolo [2 ]
Cavallo, Luigi Maria [2 ]
Elefante, Andrea [1 ]
机构
[1] Univ Naples Federico II, Dept Adv Biomed Sci, Via Pansini 5, I-80131 Naples, Italy
[2] Univ Naples Federico II, Dept Neurosci Reprod & Odontostomatol Sci, Div Neurosurg, Naples, Italy
关键词
Machine learning; Radiomics; Magnetic resonance imaging; Pituitary adenoma; Consistency; TUMOR CONSISTENCY; PREOPERATIVE EVALUATION; IMAGING FEATURES; MACROADENOMAS; IMAGES;
D O I
10.1007/s00234-020-02502-z
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Purpose Pituitary macroadenoma consistency can influence the ease of lesion removal during surgery, especially when using a transsphenoidal approach. Unfortunately, it is not assessable on standard qualitative MRI. Radiomic texture analysis could help in extracting mineable quantitative tissue characteristics. We aimed to assess the accuracy of texture analysis combined with machine learning in the preoperative evaluation of pituitary macroadenoma consistency in patients undergoing endoscopic endonasal surgery. Methods Data of 89 patients (68 soft and 21 fibrous macroadenomas) who underwent MRI and transsphenoidal surgery at our institution were retrospectively reviewed. After manual segmentation, radiomic texture features were extracted from original and filtered MR images. Feature stability analysis and a multistep feature selection were performed. After oversampling to balance the classes, 80% of the data was used for hyperparameter tuning via stratified 5-fold cross-validation, while a 20% hold-out set was employed for its final testing, using an Extra Trees ensemble meta-algorithm. The reference standard was based on surgical findings. Results A total of 1118 texture features were extracted, of which 741 were stable. After removal of low variance (n = 4) and highly intercorrelated (n = 625) parameters, recursive feature elimination identified a subset of 14 features. After hyperparameter tuning, the Extra Trees classifier obtained an accuracy of 93%, sensitivity of 100%, and specificity of 87%. The area under the receiver operating characteristic and precision-recall curves was 0.99. Conclusion Preoperative T2-weighted MRI texture analysis and machine learning could predict pituitary macroadenoma consistency.
引用
收藏
页码:1649 / 1656
页数:8
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