Department of Radiology, Adiyaman Training and Research Hospital, Adiyaman, Turkey.
Department of Radiology, Faculty of Medicine, Firat University, Elazig, Turkey.
J Digit Imaging. 2023 Jun;36(3):879-892. doi: 10.1007/s10278-022-00759-9. Epub 2023 Jan 19.
Incidental adrenal masses are seen in 5% of abdominal computed tomography (CT) examinations. Accurate discrimination of the possible differential diagnoses has important therapeutic and prognostic significance. A new handcrafted machine learning method has been developed for the automated and accurate classification of adrenal gland CT images. A new dataset comprising 759 adrenal gland CT image slices from 96 subjects were analyzed. Experts had labeled the collected images into four classes: normal, pheochromocytoma, lipid-poor adenoma, and metastasis. The images were preprocessed, resized, and the image features were extracted using the center symmetric local binary pattern (CS-LBP) method. CT images were next divided into 16 × 16 fixed-size patches, and further feature extraction using CS-LBP was performed on these patches. Next, extracted features were selected using neighborhood component analysis (NCA) to obtain the most meaningful ones for downstream classification. Finally, the selected features were classified using k-nearest neighbor (kNN), support vector machine (SVM), and neural network (NN) classifiers to obtain the optimum performing model. Our proposed method obtained an accuracy of 99.87%, 99.21%, and 98.81% with kNN, SVM, and NN classifiers, respectively. Hence, the kNN classifier yielded the highest classification results with no pathological image misclassified as normal. Our developed fixed patch CS-LBP-based automatic classification of adrenal gland pathologies on CT images is highly accurate and has low time complexity [Formula: see text]. It has the potential to be used for screening of adrenal gland disease classes with CT images.
在腹部计算机断层扫描 (CT) 检查中,偶然发现肾上腺肿块的比例为 5%。准确区分可能的鉴别诊断对治疗和预后具有重要意义。一种新的手工制作的机器学习方法已经被开发出来,用于自动准确地对肾上腺 CT 图像进行分类。分析了一个新的数据集,该数据集包含了 96 名患者的 759 张肾上腺 CT 图像切片。专家将收集的图像标记为四个类别:正常、嗜铬细胞瘤、脂少性腺瘤和转移。对图像进行预处理、调整大小,并使用中心对称局部二值模式 (CS-LBP) 方法提取图像特征。然后将 CT 图像分为 16×16 的固定大小的小块,并对这些小块使用 CS-LBP 进一步提取特征。接下来,使用邻域成分分析 (NCA) 选择提取的特征,以获得对下游分类最有意义的特征。最后,使用 k-最近邻 (kNN)、支持向量机 (SVM) 和神经网络 (NN) 分类器对选择的特征进行分类,以获得性能最佳的模型。我们提出的方法使用 kNN、SVM 和 NN 分类器分别获得了 99.87%、99.21%和 98.81%的准确率。因此,kNN 分类器的分类结果最高,没有将病理图像错误分类为正常。我们开发的基于固定补丁 CS-LBP 的 CT 图像上肾上腺病变的自动分类方法具有很高的准确性和较低的时间复杂度 [公式:见正文]。它有可能用于 CT 图像上的肾上腺疾病类别筛查。