Role of Textural Analysis Parameters Derived from FDG PET/CT in Diagnosing Cardiac Sarcoidosis

IF 0.6 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Rutuja Kote, M. Ravina, Rangnath Thippanahalli Ganga, Satyajt Singh, Moulish Reddy, Pratheek Prasanth, Rohit Kote
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Abstract

Introduction Texture and radiomic analysis characterize the lesion's phenotype and evaluate its microenvironment in quantitative terms. The aim of this study was to investigate the role of textural features of 18F-fluorodeoxyglucose (18F-FDG) positron emission tomography–computed tomography (PET/CT) images in differentiating patients with cardiac sarcoidosis (CS) from patients with physiologic myocardial uptake. Methods This is a retrospective, single-center study of 67 patients, 17 diagnosed CS patients, and 50 non-CS patients. These patients underwent FDG PET/CT for the diagnosis of CS. The non-CS group underwent 18F-FDG PET/CT for other oncological indications. The PET/CT images were then processed in a commercially available textural analysis software. Region of interest was drawn over primary tumor with a 40% threshold and was processed further to derive 92 textural and radiomic parameters. These parameters were then compared between the CS group and the non-CS group. Receiver operating characteristics (ROC) curves were used to identify cutoff values for textural features with a p-value < 0.05 for statistical significance. These parameters were then passed through a principle component analysis algorithm. Five different machine learning classifiers were then tested on the derived parameters. Results A retrospective study of 67 patients, 17 diagnosed CS patients, and 50 non-CS patients, was done. Twelve textural analysis parameters were significant in differentiating between the CS group and the non-CS group. Cutoff values were calculated for these parameters according to the ROC curves. The parameters were Discretized_HISTO_Entropy, GLCM_Homogeneity, GLCM_Energy, GLRLM_LRE, GLRLM_LGRE, GLRLM_SRLGE, GLRLM_LRLGE, NGLDM_Coarseness, GLZLM_LZE, GLZLM_LGZE, GLZLM_SZLGE, and GLZLM_LZLGE. The gradient boosting classifier gave best results on these parameters with 85.71% accuracy and an F1 score of 0.86 (max 1.0) on both classes, indicating the classifier is performing well on both classes. Conclusion Textural analysis parameters could successfully differentiate between the CS and non-CS groups noninvasively. Larger multicenter studies are needed for better clinical prognostication of these parameters.
从 FDG PET/CT 提取的纹理分析参数在诊断心脏肉样瘤病中的作用
导言:纹理和放射学分析可以描述病变的表型,并对其微环境进行定量评估。本研究旨在探讨 18F- 氟脱氧葡萄糖(18F-FDG)正电子发射计算机断层扫描(PET/CT)图像的纹理特征在区分心脏肉样瘤病(CS)患者和生理性心肌摄取患者中的作用。方法 这是一项回顾性单中心研究,共有 67 例患者,其中 17 例确诊为 CS 患者,50 例为非 CS 患者。这些患者接受了 FDG PET/CT 检查以确诊 CS。非 CS 组因其他肿瘤适应症接受了 18F-FDG PET/CT 检查。PET/CT 图像随后通过市售的纹理分析软件进行处理。以 40% 的阈值在原发肿瘤上绘制感兴趣区,然后进一步处理,得出 92 个纹理和放射学参数。然后将这些参数在 CS 组和非 CS 组之间进行比较。利用接收者操作特征(ROC)曲线确定纹理特征的临界值,p 值小于 0.05 表示具有统计学意义。然后通过原理成分分析算法对这些参数进行分析。然后在得出的参数上测试了五种不同的机器学习分类器。结果 对 67 名患者(17 名确诊为 CS 患者,50 名非 CS 患者)进行了回顾性研究。有 12 个纹理分析参数对区分 CS 组和非 CS 组有显著作用。根据 ROC 曲线计算出了这些参数的临界值。这些参数分别是:离散化熵 (Discretized_HISTO_Entropy)、同质性 (GLCM_Homogeneity)、能量 (GLCM_Energy)、GLRLM_LRE、GLRLM_LGRE、GLRLM_SRLGE、GLRLM_LRLGE、NGLDM_Coarseness、GLZLM_LZE、GLZLM_LGZE、GLZLM_SZLGE 和 GLZLM_LZLGE。梯度提升分类器在这些参数上取得了最好的结果,准确率为 85.71%,在两个类别上的 F1 得分为 0.86(最大值为 1.0),表明该分类器在两个类别上都表现良好。结论 纹理分析参数能在无创情况下成功区分 CS 组和非 CS 组。需要进行更大规模的多中心研究,以便更好地利用这些参数进行临床预后分析。
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来源期刊
World Journal of Nuclear Medicine
World Journal of Nuclear Medicine RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
自引率
16.70%
发文量
118
审稿时长
48 weeks
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