Kilicarslan Gulhan, Cetintas Dilber, Tuncer Taner, Yildirim Muhammed
Department of Radiology, Elazig Fethi Sekin City Hospital, Elazığ 23280, Turkey.
Department of Computer Engineering, Malatya Turgut Ozal University, Malatya 44210, Turkey.
Diagnostics (Basel). 2025 Jun 26;15(13):1636. doi: 10.3390/diagnostics15131636.
: Renal cell carcinoma (RCC) is a malignant disease that requires rapid and reliable diagnosis to determine the correct treatment protocol and to manage the disease effectively. However, the fact that the textural and morphological features obtained from medical images do not differ even among different tumor types poses a significant diagnostic challenge for radiologists. In addition, the subjective nature of visual assessments made by experts and interobserver variability may cause uncertainties in the diagnostic process. : In this study, a deep learning-based hybrid model using multiphase magnetic resonance imaging (MRI) data is proposed to provide accurate classification of RCC subtypes and to provide a decision support mechanism to radiologists. The proposed model performs a more comprehensive analysis by combining the T2 phase obtained before the administration of contrast material with the arterial (A) and venous (V) phases recorded after the injection of contrast material. : The model performs RCC subtype classification at the end of a five-step process. These are regions of interest (ROI), preprocessing, augmentation, feature extraction, and classification. A total of 1275 MRI images from different phases were classified with SVM, and 90% accuracy was achieved. : The findings reveal that the integration of multiphase MRI data and deep learning-based models can provide a significant improvement in RCC subtype classification and contribute to clinical decision support processes.
肾细胞癌(RCC)是一种恶性疾病,需要快速且可靠的诊断以确定正确的治疗方案并有效管理该疾病。然而,从医学图像中获得的纹理和形态特征即使在不同肿瘤类型之间也没有差异,这给放射科医生带来了重大的诊断挑战。此外,专家进行的视觉评估的主观性以及观察者间的差异可能会在诊断过程中导致不确定性。
在本研究中,提出了一种基于深度学习的混合模型,该模型使用多期磁共振成像(MRI)数据来准确分类RCC亚型,并为放射科医生提供决策支持机制。所提出的模型通过将注射造影剂之前获得的T2期与注射造影剂后记录的动脉期(A)和静脉期(V)相结合,进行更全面的分析。
该模型在一个五步过程结束时进行RCC亚型分类。这五个步骤分别是感兴趣区域(ROI)、预处理、增强、特征提取和分类。使用支持向量机(SVM)对总共1275张来自不同阶段的MRI图像进行了分类,准确率达到了90%。
研究结果表明,多期MRI数据与基于深度学习的模型的整合可以在RCC亚型分类方面带来显著改进,并有助于临床决策支持过程。