Sumon Rashadul Islam, Mozumdar Md Ariful Islam, Akter Salma, Uddin Shah Muhammad Imtiyaj, Al-Onaizan Mohammad Hassan Ali, Alkanhel Reem Ibrahim, Muthanna Mohammed Saleh Ali
Institute of Digital Anti-Aging Healthcare, Inje University, Gimhae 50834, Republic of Korea.
Department of Intelligent Systems Engineering, Faculty of Engineering and Design, Middle East University, Amman 11831, Jordan.
Diagnostics (Basel). 2025 May 16;15(10):1271. doi: 10.3390/diagnostics15101271.
Nuclei segmentation is the first stage of automated microscopic image analysis. The cell nucleus is a crucial aspect in segmenting to gain more insight into cell characteristics and functions that enable computer-aided pathology for early disease detection, such as prostate cancer, breast cancer, brain tumors, and other diagnoses. Nucleus segmentation remains a challenging task despite significant advancements in automated methods. Traditional techniques, such as Otsu thresholding and watershed approaches, are ineffective in challenging scenarios. However, deep learning-based methods exhibit remarkable results across various biological imaging modalities, including computational pathology. This work explores machine learning approaches for nuclei segmentation by evaluating the quality of nuclei image segmentation. We employed several methods, including K-means clustering, Random Forest (RF), Support Vector Machine (SVM) with handcrafted features, and Logistic Regression (LR) using features derived from Convolutional Neural Networks (CNNs). Handcrafted features extract attributes like the shape, texture, and intensity of nuclei and are meticulously developed based on specialized knowledge. Conversely, CNN-based features are automatically acquired representations that identify complex patterns in nuclei images. To assess how effectively these techniques segment cell nuclei, their performance is evaluated. Experimental results show that Logistic Regression based on CNN-derived features outperforms the other techniques, achieving an accuracy of 96.90%, a Dice coefficient of 74.24, and a Jaccard coefficient of 55.61. In contrast, the Random Forest, Support Vector Machine, and K-means algorithms yielded lower segmentation performance metrics. The conclusions suggest that leveraging CNN-based features in conjunction with Logistic Regression significantly enhances the accuracy of cell nuclei segmentation in pathological images. This approach holds promise for refining computer-aided pathology workflows, potentially leading to more reliable and earlier disease diagnoses.
细胞核分割是自动显微镜图像分析的第一阶段。细胞核是分割过程中的一个关键方面,通过它可以更深入地了解细胞特征和功能,从而实现计算机辅助病理学以进行早期疾病检测,如前列腺癌、乳腺癌、脑肿瘤及其他疾病诊断。尽管自动方法取得了显著进展,但细胞核分割仍然是一项具有挑战性的任务。传统技术,如大津阈值法和分水岭算法,在具有挑战性的场景中效果不佳。然而,基于深度学习的方法在包括计算病理学在内的各种生物成像模式中都展现出了显著的成果。这项工作通过评估细胞核图像分割的质量来探索用于细胞核分割的机器学习方法。我们采用了多种方法,包括K均值聚类、随机森林(RF)、使用手工特征的支持向量机(SVM)以及使用从卷积神经网络(CNN)派生的特征的逻辑回归(LR)。手工特征提取细胞核的形状、纹理和强度等属性,并基于专业知识精心开发。相反,基于CNN的特征是自动获取的表示,可识别细胞核图像中的复杂模式。为了评估这些技术对细胞核的分割效果,对它们的性能进行了评估。实验结果表明,基于CNN派生特征的逻辑回归优于其他技术,准确率达到96.90%,骰子系数为74.24,杰卡德系数为55.61。相比之下,随机森林、支持向量机和K均值算法产生的分割性能指标较低。结论表明,将基于CNN的特征与逻辑回归相结合可显著提高病理图像中细胞核分割的准确性。这种方法有望改进计算机辅助病理学工作流程,可能带来更可靠和更早的疾病诊断。