Prediction of high proliferative index in pituitary macroadenomas using MRI-based radiomics and machine learning

被引:71
|
作者
Ugga, Lorenzo [1 ]
Cuocolo, Renato [1 ]
Solari, Domenico [2 ]
Guadagno, Elia [3 ]
D'Amico, Alessandra [1 ]
Somma, Teresa [2 ]
Cappabianca, Paolo [2 ]
de Caro, Maria Laura del Basso [3 ]
Cavallo, Luigi Maria [2 ]
Brunetti, Arturo [1 ]
机构
[1] Univ Naples Federico II, Dept Adv Biomed Sci, Via Sergio Pansini 5, I-80131 Naples, Italy
[2] Univ Naples Federico II, Dept Neurosci Reprod & Odontostomatol Sci, Div Neurosurg, Naples, Italy
[3] Univ Naples Federico II, Dept Adv Biomed Sci, Pathol Sect, Naples, Italy
关键词
Machine learning; Magnetic resonance imaging; Pituitary adenoma; APPARENT DIFFUSION-COEFFICIENT; TEXTURAL FEATURES; ADENOMAS; CLASSIFICATION; IMAGES; TUMORS; KI-67;
D O I
10.1007/s00234-019-02266-1
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Purpose Pituitary adenomas are among the most frequent intracranial tumors. They may exhibit clinically aggressive behavior, with recurrent disease and resistance to multimodal therapy. The ki-67 labeling index represents a proliferative marker which correlates with pituitary adenoma aggressiveness. Aim of our study was to assess the accuracy of machine learning analysis of texture-derived parameters from pituitary adenomas preoperative MRI for the prediction of ki-67 proliferation index class. Methods A total of 89 patients who underwent an endoscopic endonasal procedure for pituitary adenoma removal with available ki-67 labeling index were included. From T2w MR images, 1128 quantitative imaging features were extracted. To select the most informative features, different supervised feature selection methods were employed. Subsequently, a k-nearest neighbors (k-NN) classifier was employed to predict macroadenoma high or low proliferation index. Algorithm validation was performed with a train-test approach. Results Of the 12 subsets derived from feature selection, the best performing one was constituted by the 4 highest correlating parameters at Pearson's test. These all showed very good (ICC >= 0.85) inter-observer reproducibility. The overall accuracy of the k-NN in the test group was of 91.67% (33/36) of correctly classified patients. Conclusions Machine learning analysis of texture-derived parameters from preoperative T2 MRI has proven to be effective for the prediction of pituitary macroadenomas ki-67 proliferation index class. This might aid the surgical strategy making a more accurate preoperative lesion classification and allow for a more focused and cost-effective follow-up and long-term management.
引用
收藏
页码:1365 / 1373
页数:9
相关论文
共 50 条
  • [1] Prediction of high proliferative index in pituitary macroadenomas using MRI-based radiomics and machine learning
    Lorenzo Ugga
    Renato Cuocolo
    Domenico Solari
    Elia Guadagno
    Alessandra D’Amico
    Teresa Somma
    Paolo Cappabianca
    Maria Laura del Basso de Caro
    Luigi Maria Cavallo
    Arturo Brunetti
    [J]. Neuroradiology, 2019, 61 : 1365 - 1373
  • [2] Prediction of high infiltration levels in pituitary adenoma using MRI-based radiomics and machine learning
    Zhang Chao
    Heng Xueyuan
    Neng Wenpeng
    Chen Haixin
    Sun Aigang
    Li Jinxing
    Wang Mingguang
    [J]. 中华神经外科杂志(英文), 2022, 08 (04)
  • [3] Prediction of high infiltration levels in pituitary adenoma using MRI-based radiomics and machine learning
    Zhang C.
    Heng X.
    Neng W.
    Chen H.
    Sun A.
    Li J.
    Wang M.
    [J]. Chinese Neurosurgical Journal, 8 (1)
  • [4] Identification of high-risk carotid plaque with MRI-based radiomics and machine learning
    Zhang, Ranying
    Zhang, Qingwei
    Ji, Aihua
    Lv, Peng
    Zhang, Jingjing
    Fu, Caixia
    Lin, Jiang
    [J]. EUROPEAN RADIOLOGY, 2021, 31 (05) : 3116 - 3126
  • [5] Identification of high-risk carotid plaque with MRI-based radiomics and machine learning
    Ranying Zhang
    Qingwei Zhang
    Aihua Ji
    Peng Lv
    Jingjing Zhang
    Caixia Fu
    Jiang Lin
    [J]. European Radiology, 2021, 31 : 3116 - 3126
  • [6] Prediction of angiogenesis in extrahepatic cholangiocarcinoma using MRI-based machine learning
    Liu, Jiong
    Liu, Mali
    Gong, Yaolin
    Su, Song
    Li, Man
    Shu, Jian
    [J]. FRONTIERS IN ONCOLOGY, 2023, 13
  • [7] Multiparametric MRI-Based Radiomics Signature with Machine Learning for Preoperative Prediction of Prognosis Stratification in Pediatric Medulloblastoma
    Luo, Yi
    Zhuang, Yijiang
    Zhang, Siqi
    Wang, Jingsheng
    Teng, Songyu
    Zeng, Hongwu
    [J]. ACADEMIC RADIOLOGY, 2024, 31 (04) : 1629 - 1642
  • [8] Machine learning and radiomics for ventricular tachyarrhythmia prediction in hypertrophic cardiomyopathy: insights from an MRI-based analysis
    Department of Radiology, Cerrahpasa Faculty of Medicine, Istanbul University-Cerrahpasa, Istanbul, Turkey
    不详
    不详
    NY, United States
    不详
    TX, United States
    不详
    [J]. Acta Radiol., 2024, 12 (1473-1481):
  • [9] MRI radiomics for the prediction of recurrence in patients with clinically non-functioning pituitary macroadenomas
    Machado, Leonardo F.
    Elias, Paula C. L.
    Moreira, Ayrton C.
    dos Santos, Antonio C.
    Murta Junior, Luiz O.
    [J]. COMPUTERS IN BIOLOGY AND MEDICINE, 2020, 124
  • [10] Prediction of diabetes insipidus occurrence after endoscopic endonasal removal of sellar lesions using MRI-based radiomics and machine learning
    Mastantuoni, Ciro
    Ugga, Lorenzo
    Solari, Domenico
    D'Aniello, Serena
    Spadarella, Gaia
    Cuocolo, Renato
    Angileri, Filippo F.
    Cavallo, Luigi M.
    [J]. JOURNAL OF NEUROSURGICAL SCIENCES, 2024,