Ramli Zarina, Farizan Aishah, Tamchek Nizam, Haron Zaharudin, Abdul Karim Muhammad Khalis
Department of Radiology, National Cancer Institute, Putrajaya, MYS.
Department of Physics, Universiti Putra Malaysia, Serdang, MYS.
Cureus. 2024 Jan 11;16(1):e52132. doi: 10.7759/cureus.52132. eCollection 2024 Jan.
The diffusion-weighted imaging (DWI) technique is known for its capability to differentiate the diffusion of water molecules between cancerous and non-cancerous cervix tissues, which enhances the accuracy of detection. Despite the potential of DWI-MRI, its accuracy is limited by technical factors influencing in vivo data acquisition, thus impacting the quantification of radiomics features. This study aimed to measure the radiomics stability of manual and semi-automated segmentation on contrast limited adaptive histogram equalization (CLAHE)-enhanced DWI-MRI cervical images. Eighty diffusion-weighted MRI images were obtained from patients diagnosed with cervical cancer, and an active contour model was used to analyze the data. Radiomics analysis was conducted to extract the first statistical order, shape, and textural features with intraclass correlation coefficient (ICC) measurement. The results of the CLAHE segmentation approach showed a marked improvement when compared to the manual and semi-automated segmentation methods, with an ICC value of 0.990 ± 0.005 (p<0.05), compared to 0.864 ± 0.033 (p<0.05) and 0.554 ± 0.185 (p>0.05), respectively. The CLAHE segmentation displayed a higher level of robustness than the manual groups in terms of the features present in both categories. Thus, CLAHE segmentation is owing to its potential to generate radiomics features that are more durable and consistent.
扩散加权成像(DWI)技术以其区分水分子在癌性和非癌性宫颈组织之间扩散的能力而闻名,这提高了检测的准确性。尽管DWI-MRI具有潜力,但其准确性受到影响体内数据采集的技术因素的限制,从而影响了放射组学特征的量化。本研究旨在测量对比受限自适应直方图均衡化(CLAHE)增强的DWI-MRI宫颈图像上手动和半自动分割的放射组学稳定性。从诊断为宫颈癌的患者中获取了80幅扩散加权MRI图像,并使用主动轮廓模型分析数据。进行放射组学分析以提取一阶统计、形状和纹理特征,并测量组内相关系数(ICC)。与手动和半自动分割方法相比,CLAHE分割方法的结果显示出显著改善,ICC值为0.990±0.005(p<0.05),而手动和半自动分割方法的ICC值分别为0.864±0.033(p<0.05)和0.554±0.185(p>0.05)。就两类特征而言,CLAHE分割在稳健性方面表现高于手动组。因此,CLAHE分割因其具有生成更持久和一致放射组学特征的潜力。