Feng Bao, Ma Changyi, Liu Yu, Hu Qinghui, Lei Yan, Wan Meiqi, Lin Fan, Cui Jin, Long Wansheng, Cui Enming
Department of Radiology, Jiangmen Central Hospital, Jiangmen, 529030, China.
Laboratory of Intelligent Detection and Information Processing, Guilin University of Aerospace Technology, Guilin, 541004, China.
Heliyon. 2024 Feb 6;10(3):e25655. doi: 10.1016/j.heliyon.2024.e25655. eCollection 2024 Feb 15.
Differentiating adrenal adenomas from metastases poses a significant challenge, particularly in patients with a history of extra-adrenal malignancy. This study investigates the performance of three-phase computed tomography (CT) based robust federal learning algorithm and traditional deep learning for distinguishing metastases from benign adrenal lesions.
This retrospective analysis includes 1187 instances who underwent three-phase CT scans between January 2008 and March 2021, comprising 720 benign lesions and 467 metastases. Utilizing the three-phase CT images, both a Robust Federal Learning Signature (RFLS) and a traditional Deep Learning Signature (DLS) were constructed using the Least Absolute Shrinkage and Selection Operator (LASSO) logistic regression. Their diagnostic capabilities were subsequently validated and compared using metrics such as the Areas Under the Receiver Operating Curve (AUCs), Net Reclassification Improvement (NRI), and Decision Curve Analysis (DCA).
Compared with DLS, the RFLS showed better capability in distinguishing metastases from benign adrenal lesions (average AUC: 0.816 vs.0.798, NRI = 0.126, P < 0.072; 0.889 vs.0.838, NRI = 0.209, P < 0.001; 0.903 vs.0.825, NRI = 0.643, p < 0.001) in the four-testing cohort, respectively. DCA showed that the RFLS added more net benefit than DLS for clinical utility. Moreover, Comparison with state-of-the-art federal learning methods, the results once again confirmed that the RFLS significantly improved the diagnostic performance based on three-phase CT (AUC: AP, 0.727 vs. 0.757 vs. 0.739 vs. 0.796; PCP, 0.781 vs. 0.851 vs. 0.790 vs. 0.882; VP, 0.789 vs. 0.814 vs. 0.779 vs. 0.886).
RFLS was superior to DLS for preoperative distinguishing metastases from benign adrenal lesions with multi-phase CT Images.
鉴别肾上腺腺瘤与转移瘤是一项重大挑战,尤其是在有肾上腺外恶性肿瘤病史的患者中。本研究调查了基于三相计算机断层扫描(CT)的稳健联邦学习算法和传统深度学习在区分转移瘤与良性肾上腺病变方面的性能。
这项回顾性分析纳入了2008年1月至2021年3月期间接受三相CT扫描的1187例患者,包括720例良性病变和467例转移瘤。利用三相CT图像,使用最小绝对收缩和选择算子(LASSO)逻辑回归构建了稳健联邦学习特征(RFLS)和传统深度学习特征(DLS)。随后,使用受试者操作特征曲线下面积(AUC)、净重新分类改善(NRI)和决策曲线分析(DCA)等指标对它们的诊断能力进行了验证和比较。
在四个测试队列中,与DLS相比,RFLS在区分转移瘤与良性肾上腺病变方面表现出更好的能力(平均AUC:分别为0.816对0.798,NRI = 0.126,P < 0.072;0.889对0.838,NRI = 0.209,P < 0.001;0.903对0.825,NRI = 0.643,P < 0.001)。DCA表明,RFLS在临床应用中比DLS增加了更多的净效益。此外,与最先进的联邦学习方法相比,结果再次证实RFLS显著提高了基于三相CT的诊断性能(AUC:AP,0.727对0.757对0.739对0.796;PCP,0.781对0.851对0.790对0.882;VP,0.789对0.814对0.779对0.886)。
对于术前利用多期CT图像区分转移瘤与良性肾上腺病变,RFLS优于DLS。