Department of Advanced Biomedical Sciences, University of Naples "Federico II", via Sergio Pansini 5, 80131, Naples, Italy.
Department of Neurosciences, Reproductive and Odontostomatological Sciences, Division of Neurosurgery, University of Naples "Federico II", Naples, Italy.
Neuroradiology. 2019 Dec;61(12):1365-1373. doi: 10.1007/s00234-019-02266-1. Epub 2019 Aug 2.
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.
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.
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.
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.
垂体腺瘤是最常见的颅内肿瘤之一。它们可能表现出临床侵袭性行为,疾病复发且对多模式治疗有耐药性。Ki-67 标记指数是一种与垂体腺瘤侵袭性行为相关的增殖标志物。我们的研究目的是评估基于机器学习的术前 MRI 纹理参数分析对预测 Ki-67 增殖指数分级的准确性。
共纳入 89 例接受内镜经鼻垂体腺瘤切除术且 Ki-67 标记指数可获得的患者。从 T2w MRI 图像中提取了 1128 个定量成像特征。为了选择最具信息量的特征,采用了不同的有监督特征选择方法。随后,使用 k-最近邻(k-NN)分类器预测大腺瘤的高或低增殖指数。采用训练-测试方法进行算法验证。
在特征选择得到的 12 个子集中,表现最好的子集由 Pearson 检验中相关性最高的 4 个参数组成。这些参数的观察者间重现性均非常好(ICC≥0.85)。k-NN 在测试组中的总体准确率为 91.67%(33/36),正确分类的患者比例为 91.67%。
基于术前 T2 MRI 的纹理参数的机器学习分析已被证明对预测垂体大腺瘤 Ki-67 增殖指数分级有效。这可能有助于手术策略,使术前病变分类更准确,并允许更有针对性、更具成本效益的随访和长期管理。