Differentiation of multiple adrenal adenoma subtypes based on a radiomics and clinico-radiological model: a dual-center study.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Xinzhang Zhang, Yapeng Si, Xin Shi, Yiwen Zhang, Liuyang Yang, Junfeng Yang, Ye Zhang, Jinjun Leng, Pingping Hu, Hao Liu, Jiaqi Chen, Wenliang Li, Wei Song, Jianping Zhu, Maolin Yang, Wei Li, Junfeng Wang
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引用次数: 0

Abstract

Background: The prevalence and detection rates of adrenal incidentalomas have been on the rise globally, with more than 90% of these lesions pathologically classified as adrenocortical adenomas. Among these, approximately 30% of patients present with hormone-secreting adenomas, leading to the deterioration of their health, with some requiring surgical resection. The available methods for adrenal function evaluation are invasive and costly. Moreover, their accuracy is influenced by numerous factors. Therefore, it is imperative to develop non-invasive and simplified preoperative diagnostic approach.

Methods: A retrospective study was performed on 169 patients from two tertiary medical centers. Subsequently, radiomics features were extracted after tumor margins were delineated layer-by-layer using a semi-automatic contouring approach. Feature selection was achieved in two cycles, with the first round utilizing a support vector machine (SVM) and the second round using a LASSO-based recursive feature elimination algorithm. Finally, logistic regression models were constructed using the clinico-radiological, radiomics, and a combination of both.

Results: After a comprehensive evaluation of the predictive indicators, the logistic regression classifier model based on the combined clinico-radiological and radiomic features had an AUC of (0.945, 0.927, 0.856) for aldosterone-producing adenoma (APA), (0.963, 0.889, 0.887) for cortisol-producing adenoma (CPA), and (0.940, 0.765, 0.816) for non-functioning adrenal adenoma (NAA) in the training set, validation set, and external test set, respectively. This model exhibited superior predictive performance in differentiating between the three adrenal adenoma subtypes.

Conclusions: A logistic regression model was constructed using radiomics and clinico-radiological features derived from multi-phase enhanced CT images and conducted external validation. The combined model showed good overall performance, highlighting the feasibility of applying the model for preoperative differentiation and prediction of various types of ACA.

背景:肾上腺偶发瘤的发病率和检出率在全球呈上升趋势,其中超过 90% 的病变在病理上被归类为肾上腺皮质腺瘤。其中,约 30% 的患者表现为分泌激素的腺瘤,导致健康状况恶化,部分患者需要进行手术切除。现有的肾上腺功能评估方法都是侵入性的,而且成本高昂。此外,它们的准确性还受到许多因素的影响。因此,开发无创、简化的术前诊断方法势在必行:方法:对两家三级医疗中心的 169 名患者进行了回顾性研究。方法:对来自两个三级医疗中心的 169 名患者进行了回顾性研究,然后使用半自动轮廓法逐层划分肿瘤边缘,提取放射组学特征。特征选择分两轮进行,第一轮使用支持向量机(SVM),第二轮使用基于 LASSO 的递归特征消除算法。最后,利用临床放射学、放射组学以及两者的结合构建了逻辑回归模型:经过对预测指标的综合评估,基于临床放射学和放射组学组合特征的逻辑回归分类器模型对醛固酮的 AUC 为(0.945, 0.927, 0.在训练集、验证集和外部测试集中,醛固酮生成腺瘤(APA)的AUC为(0.945,0.927,0.856),皮质醇生成腺瘤(CPA)的AUC为(0.963,0.889,0.887),非功能性肾上腺腺瘤(NAA)的AUC为(0.940,0.765,0.816)。该模型在区分三种肾上腺腺瘤亚型方面表现出卓越的预测性能:利用从多期增强 CT 图像中提取的放射组学和临床放射学特征构建了一个逻辑回归模型,并进行了外部验证。综合模型显示出良好的整体性能,突出了应用该模型对各种类型的肾上腺腺瘤进行术前区分和预测的可行性。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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