Identification of Prolactinoma in Pituitary Neuroendocrine Tumors Using Radiomics Analysis Based on Multiparameter MRI.

Hongxia Li, Zhiling Liu, Fuyan Li, Yuwei Xia, Tong Zhang, Feng Shi, Qingshi Zeng
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Abstract

This study aims to investigate the feasibility of preoperatively predicting histological subtypes of pituitary neuroendocrine tumors (PitNETs) using machine learning and radiomics based on multiparameter MRI. Patients with PitNETs from January 2016 to May 2022 were retrospectively enrolled from four medical centers. A cfVB-Net network was used to automatically segment PitNET multiparameter MRI. Radiomics features were extracted from the MRI, and the radiomics score (Radscore) of each patient was calculated. To predict histological subtypes, the Gaussian process (GP) machine learning classifier based on radiomics features was performed. Multi-classification (six-class histological subtype) and binary classification (PRL vs. non-PRL) GP model was constructed. Then, a clinical-radiomics nomogram combining clinical factors and Radscores was constructed using the multivariate logistic regression analysis. The performance of the models was evaluated using receiver operating characteristic (ROC) curves. The PitNET auto-segmentation model eventually achieved the mean Dice similarity coefficient of 0.888 in 1206 patients (mean age 49.3 ± SD years, 52% female). In the multi-classification model, the GP of T2WI got the best area under the ROC curve (AUC), with 0.791, 0.801, and 0.711 in the training, validation, and external testing set, respectively. In the binary classification model, the GP of T2WI combined with CE T1WI demonstrated good performance, with AUC of 0.936, 0.882, and 0.791 in training, validation, and external testing sets, respectively. In the clinical-radiomics nomogram, Radscores and Hardy' grade were identified as predictors for PRL expression. Machine learning and radiomics analysis based on multiparameter MRI exhibited high efficiency and clinical application value in predicting the PitNET histological subtypes.

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基于多参数磁共振成像的放射组学分析鉴定垂体神经内分泌肿瘤中的泌乳素瘤
本研究旨在探讨基于多参数磁共振成像的机器学习和放射组学术前预测垂体神经内分泌肿瘤(PitNET)组织学亚型的可行性。四家医疗中心回顾性招募了2016年1月至2022年5月期间的垂体神经内分泌肿瘤(PitNET)患者。使用 cfVB-Net 网络自动分割 PitNET 多参数磁共振成像。从磁共振成像中提取放射组学特征,并计算每位患者的放射组学评分(Radscore)。为了预测组织学亚型,采用了基于放射组学特征的高斯过程(GP)机器学习分类器。构建了多分类(六级组织学亚型)和二元分类(PRL 与非 PRL)GP 模型。然后,利用多变量逻辑回归分析构建了临床因素和 Radscores 的临床-放射组学提名图。利用接收者操作特征曲线(ROC)对模型的性能进行了评估。在1206名患者(平均年龄(49.3 ± SD)岁,52%为女性)中,PitNET自动分割模型的平均Dice相似系数最终达到0.888。在多分类模型中,T2WI 的 GP 获得了最佳的 ROC 曲线下面积(AUC),在训练集、验证集和外部测试集中分别为 0.791、0.801 和 0.711。在二元分类模型中,T2WI 结合 CE T1WI 的 GP 表现良好,在训练集、验证集和外部测试集中的 AUC 分别为 0.936、0.882 和 0.791。在临床放射组学提名图中,Radscores和Hardy'分级被确定为PRL表达的预测因子。基于多参数磁共振成像的机器学习和放射组学分析在预测PitNET组织学亚型方面表现出很高的效率和临床应用价值。
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