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

被引:36
|
作者
Peng, AiJun [1 ]
Dai, HuMing [2 ]
Duan, HaiHan [2 ]
Chen, YaXing [1 ]
Huang, JianHan [1 ]
Zhou, LiangXue [1 ]
Chen, LiangYin [2 ,3 ]
机构
[1] Sichuan Univ, West China Hosp, Dept Neurosurg, Chengdu 610041, Sichuan, Peoples R China
[2] Sichuan Univ, Coll Comp Sci, Chengdu 610065, Sichuan, Peoples R China
[3] Sichuan Univ, Inst Ind Internet Res, Chengdu, Sichuan, Peoples R China
关键词
Pituitary adenomas; Pituitary transcription factor; Radiomics support vector machine; CLASSIFICATION; PREVALENCE; MANAGEMENT; DIAGNOSIS;
D O I
10.1016/j.ejrad.2020.108892
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: 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. Methods: 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 Naive Bayes (NBs) models. Ten-fold cross-validation was applied to evaluate the performance of these models. Results: 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. Conclusions: 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.
引用
收藏
页数:8
相关论文
共 50 条
  • [1] Using ensemble learning and genetic algorithm on magnetic resonance imaging radiomics to classify molecular subtypes of breast cancer
    Le, Nguyen Quoc Khanh
    Ho, Dang Khanh Ngan
    Ta, Hoang Dang Khoa
    Nguyen, Hieu Trung
    PRECISION MEDICAL SCIENCES, 2023, 12 (02): : 104 - 112
  • [2] Radiomic analysis of preoperative magnetic resonance imaging for the prediction of pituitary adenoma consistency
    Mendi, Boekebatur Ahmet Rasit
    Batur, Halitcan
    Cay, Nurdan
    Cakir, Banu Topcu
    ACTA RADIOLOGICA, 2023, 64 (08) : 2470 - 2478
  • [3] MACHINE LEARNING-BASED RADIOMIC MODEL USING MULTIPARAMETRIC MAGNETIC RESONANCE IMAGING FOR PREDICTION OF POSTOPERATIVE VISUAL RECOVERY OF PITUITARY ADENOMA PATIENTS
    Zhang, Y.
    Chen, C.
    Xu, J.
    NEURO-ONCOLOGY, 2023, 25
  • [4] Radiomics based on magnetic resonance imaging for preoperative prediction of lymph node metastasis in head and neck cancer: Machine learning study
    Wang, Yuepeng
    Yu, Taihui
    Yang, Zehong
    Zhou, Yuwei
    Kang, Ziqin
    Wang, Yan
    Huang, Zhiquan
    HEAD AND NECK-JOURNAL FOR THE SCIENCES AND SPECIALTIES OF THE HEAD AND NECK, 2022, 44 (12): : 2786 - 2795
  • [5] Machine Learning-Based Multiparametric Magnetic Resonance Imaging Radiomics Model for Preoperative Predicting the Deep Stromal Invasion in Patients with Early Cervical Cancer
    Yan, Haowen
    Huang, Gaoting
    Yang, Zhihe
    Chen, Yirong
    Xiang, Zhiming
    JOURNAL OF IMAGING INFORMATICS IN MEDICINE, 2024, 37 (01): : 230 - 246
  • [6] Machine Learning-Based Multiparametric Magnetic Resonance Imaging Radiomic Model for Discrimination of Pathological Subtypes of Craniopharyngioma
    Huang, Zhou-San
    Xiao, Xiang
    Li, Xiao-Dan
    Mo, Hai-Zhu
    He, Wen-Le
    Deng, Yao-Hong
    Lu, Li-Jun
    Wu, Yuan-Kui
    Liu, Hao
    JOURNAL OF MAGNETIC RESONANCE IMAGING, 2021, 54 (05) : 1541 - 1550
  • [7] Radiomics using multiparametric magnetic resonance imaging to predict postoperative visual outcomes of patients with pituitary adenoma
    Zhang, Yang
    Huang, Zhouyang
    Zhao, Yanjie
    Xu, Jianfeng
    Chen, Chaoyue
    Xu, Jianguo
    ASIAN JOURNAL OF SURGERY, 2025, 48 (01) : 166 - 172
  • [8] Radiomics-Based Machine Learning to Predict Recurrence in Glioma Patients Using Magnetic Resonance Imaging
    Hu, Guanjie
    Hu, Xinhua
    Yang, Kun
    Yu, Yun
    Jiang, Zijuan
    Liu, Yong
    Liu, Dongming
    Hu, Xiao
    Xiao, Hong
    Zou, Yuanjie
    You, Yongping
    Liu, Hongyi
    Chen, Jiu
    JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY, 2023, 47 (01) : 129 - 135
  • [9] Machine learning–based multiparametric magnetic resonance imaging radiomics model for distinguishing central neurocytoma from glioma of lateral ventricle
    Haizhu Mo
    Wen Liang
    Zhousan Huang
    Xiaodan Li
    Xiang Xiao
    Hao Liu
    Jianming He
    Yikai Xu
    Yuankui Wu
    European Radiology, 2023, 33 : 4259 - 4269
  • [10] Radiomics and machine learning analysis based on magnetic resonance imaging in the assessment of liver mucinous colorectal metastases
    Granata, Vincenza
    Fusco, Roberta
    De Muzio, Federica
    Cutolo, Carmen
    Setola, Sergio Venanzio
    Dell'Aversana, Federica
    Grassi, Francesca
    Belli, Andrea
    Silvestro, Lucrezia
    Ottaiano, Alessandro
    Nasti, Guglielmo
    Avallone, Antonio
    Flammia, Federica
    Miele, Vittorio
    Tatangelo, Fabiana
    Izzo, Francesco
    Petrillo, Antonella
    RADIOLOGIA MEDICA, 2022, 127 (07): : 763 - 772