Department of Computer Science and Engineering, VSSUT, Burla, Odisha, 768018, India.
Department of Computer Science and Engineering, SUIIT, Sambalpur University, Burla, Odisha, 768019, India.
J Cancer Res Clin Oncol. 2024 Jul 25;150(7):361. doi: 10.1007/s00432-024-05879-z.
This study presents a robust approach for the classification of ovarian cancer subtypes through the integration of deep learning and k-nearest neighbor (KNN) methods. The proposed model leverages the powerful feature extraction capabilities of EfficientNet-B0, utilizing its deep features for subsequent fine-grained classification using the fine-KNN approach. The UBC-OCEAN dataset, encompassing histopathological images of five distinct ovarian cancer subtypes, namely, high-grade serous carcinoma (HGSC), clear-cell ovarian carcinoma (CC), endometrioid carcinoma (EC), low-grade serous carcinoma (LGSC), and mucinous carcinoma (MC), served as the foundation for our investigation. With a dataset comprising 725 images, divided into 80% for training and 20% for testing, our model exhibits exceptional performance. Both the validation and testing phases achieved 100% accuracy, underscoring the efficacy of the proposed methodology. In addition, the area under the curve (AUC), a key metric for evaluating the model's discriminative ability, demonstrated high performance across various subtypes, with AUC values of 0.94, 0.78, 0.69, 0.92, and 0.94 for MC. Furthermore, the positive likelihood ratios (LR) were indicative of the model's diagnostic utility, with notable values for each subtype: CC (27.294), EC (9.441), HGSC (12.588), LGSC (17.942), and MC (17.942). These findings demonstrate the effectiveness of the model in distinguishing between ovarian cancer subtypes, positioning it as a promising tool for diagnostic applications. The demonstrated accuracy, AUC values, and LR values underscore the potential of the model as a valuable diagnostic tool, contributing to the advancement of precision medicine in the field of ovarian cancer research.
本研究提出了一种通过整合深度学习和 K-最近邻(KNN)方法对卵巢癌亚型进行分类的稳健方法。所提出的模型利用了 EfficientNet-B0 的强大特征提取能力,利用其深度特征,通过精细 KNN 方法进行后续的细粒度分类。UBC-OCEAN 数据集包含五种不同的卵巢癌亚型的组织病理学图像,即高级别浆液性癌(HGSC)、透明细胞卵巢癌(CC)、子宫内膜样癌(EC)、低级别浆液性癌(LGSC)和黏液性癌(MC),作为我们研究的基础。该数据集包含 725 张图像,其中 80%用于训练,20%用于测试。我们的模型在验证和测试阶段都表现出了 100%的准确率,证明了该方法的有效性。此外,曲线下面积(AUC)是评估模型区分能力的关键指标,该模型在各个亚型的表现都非常出色,MC 的 AUC 值为 0.94、0.78、0.69、0.92 和 0.94。此外,阳性似然比(LR)表明了模型的诊断实用性,每个亚型都有显著的值:CC(27.294)、EC(9.441)、HGSC(12.588)、LGSC(17.942)和 MC(17.942)。这些发现表明该模型在区分卵巢癌亚型方面的有效性,将其定位为一种有前途的诊断应用工具。所展示的准确性、AUC 值和 LR 值强调了该模型作为一种有价值的诊断工具的潜力,为卵巢癌研究领域的精准医学的发展做出了贡献。