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用于预测肢端肥大症患者立体定向放射治疗后缓解情况的低秩融合卷积神经网络:一项概念验证研究

Low-rank fusion convolutional neural network for prediction of remission after stereotactic radiosurgery in patients with acromegaly: a proof-of-concept study.

作者信息

Qiao Nidan, Yu Damin, Wu Guoqing, Zhang Qilin, Yao Boyuan, He Min, Ye Hongying, Zhang Zhaoyun, Wang Yongfei, Wu Hanfeng, Zhao Yao, Yu Jinhua

机构信息

Department of Neurosurgery, Huashan Hospital, Shanghai, PR China.

Neurosurgical Institute of Fudan University, Shanghai, PR China.

出版信息

J Pathol. 2022 Sep;258(1):49-57. doi: 10.1002/path.5974. Epub 2022 Jul 22.

Abstract

Artificial intelligence approaches to analyze pathological images (pathomic) for outcome prediction have not been sufficiently considered in the field of pituitary research. A total of 5,504 hematoxylin & eosin-stained pathology image tiles from 58 acromegalic patients with a good or poor outcome were integrated with other clinical and genetic information to train a low-rank fusion convolutional neural network (LFCNN). The model was externally validated in 1,536 patches from an external cohort. The primary outcome was the time to the first endocrine remission after stereotactic radiosurgery (SRS). The median time of initial endocrine remission was 43 months (interquartile range [IQR]: 13-60 months) after SRS, and the 24-month initial cumulative remission rate was 57.9% (IQR: 46.4-72.3%). The patient-wise accuracy of the LFCNN model in predicting the primary outcome was 92.9% in the internal test dataset, and the sensitivity and specificity were 87.5 and 100.0%, respectively. The LFCNN model was a strong predictor of initial cumulative remission in the training cohort (hazard ratio [HR] 9.58, 95% confidence interval [CI] 3.89-23.59; p < 0.001) and was higher than that of established prognostic markers. The predictive value of the LFCNN model was further validated in an external cohort (HR 9.06, 95% CI 1.14-72.25; p = 0.012). In this proof-of-concept study, clinically and genetically useful prognostic markers were integrated with digital images to predict endocrine outcomes after SRS in patients with active acromegaly. The model considerably outperformed established prognostic markers and can potentially be used by clinicians to improve decision-making regarding adjuvant treatment choices. © 2022 The Pathological Society of Great Britain and Ireland.

摘要

在垂体研究领域,尚未充分考虑利用人工智能方法分析病理图像(病理组学)来预测预后。将来自58例肢端肥大症患者(预后良好或不良)的5504张苏木精和伊红染色的病理图像切片与其他临床和基因信息相结合,训练一个低秩融合卷积神经网络(LFCNN)。该模型在来自外部队列的1536个图像块上进行了外部验证。主要结局是立体定向放射外科治疗(SRS)后首次内分泌缓解的时间。SRS后初始内分泌缓解的中位时间为43个月(四分位间距[IQR]:13 - 60个月),24个月初始累积缓解率为57.9%(IQR:46.4 - 72.3%)。在内部测试数据集中,LFCNN模型预测主要结局的患者层面准确率为92.9%,敏感性和特异性分别为87.5%和100.0%。LFCNN模型是训练队列中初始累积缓解的有力预测指标(风险比[HR] 9.58,95%置信区间[CI] 3.89 - 23.59;p < 0.001),且高于已确立的预后标志物。LFCNN模型的预测价值在外部队列中得到进一步验证(HR 9.06,95% CI 1.14 - 72.25;p = 0.012)。在这项概念验证研究中,将临床和基因方面有用的预后标志物与数字图像相结合,以预测活动性肢端肥大症患者SRS后的内分泌结局。该模型的表现明显优于已确立的预后标志物,临床医生有可能利用它来改进辅助治疗选择的决策。© 2022英国和爱尔兰病理学会

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