Department of Dermatology and Pathology, Faculty of Medicine, School of Medicine, Mersin University, Mersin, Turkey.
Analysis, Department of Anatomy, Mersin University, Instute of Healh Sciences, Mersin, Türkiye.
Arch Dermatol Res. 2023 Jul;315(5):1315-1322. doi: 10.1007/s00403-022-02521-1. Epub 2022 Dec 26.
Mycosis Fungoides (MF) makes up the most of the cutaneous lymphomas. As a malignant disease, the greatest diagnostical challenge is to timely differentiate MF from inflammatory diseases. Contemporary computational methods successfully identify cell nuclei in histological specimens. Deep learning methods are especially favored for such tasks. A deep learning model was used to detect nuclei Hematoxylin-Eosin(H-E) stained micrographs. Nuclear properties are extracted after detection. A multi-layer perceptron classifier is used to detect lymphocytes specifically among the detected nuclei. The comparisons for each property between MF and non-MF were carried out using statistical tests the results are compared with the findings in the literature to provide a descriptive analysis as well. Random forest classifier method is used to build a model to classify MF and non-MF lymphocytes. 10 nuclear properties were statistically significantly different between MF and non-MF specimens. MF nuclei were smaller, darker and more heterogenous. Lymphocyte detection algorithm had an average 90.5% prediction power and MF detection algorithm had an average 94.2% prediction power. This project aims to fill the gap between computational advancement and medical practice. The models could make MF diagnoses easier, more accurate and earlier. The results also challenge the manually examined and defined nuclear properties of MF with the help of data abundance and computer objectivity.
蕈样肉芽肿(MF)构成了大多数皮肤淋巴瘤。作为一种恶性疾病,最大的诊断挑战是及时将 MF 从炎症性疾病中区分出来。当代计算方法成功地识别组织学标本中的细胞核。深度学习方法特别适合此类任务。使用深度学习模型来检测苏木精 - 伊红(H-E)染色的显微镜载玻片上的细胞核。在检测后提取核属性。多层感知机分类器用于在检测到的核中特异性地检测淋巴细胞。使用统计检验对 MF 和非 MF 之间的每种特性进行比较,并与文献中的发现进行比较,以提供描述性分析。使用随机森林分类器方法构建用于分类 MF 和非 MF 淋巴细胞的模型。MF 和非 MF 标本之间有 10 种核特性存在统计学显著差异。MF 核更小、更暗且更不均匀。淋巴细胞检测算法的预测准确率平均为 90.5%,MF 检测算法的预测准确率平均为 94.2%。本项目旨在弥合计算进展与医疗实践之间的差距。这些模型可以使 MF 诊断更容易、更准确和更早。结果还借助数据丰富性和计算机客观性挑战了手动检查和定义的 MF 核特性。