LB118:基于机器学习的胰腺导管腺癌肿瘤分级:探索纹理特征的自动分类和临床决策支持

IF 12.5 1区 医学 Q1 ONCOLOGY
Miracle Thomas
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引用次数: 0

摘要

胰腺导管腺癌(PDAC)是一种侵袭性恶性肿瘤,也是美国癌症相关死亡的主要原因。由于发病晚,通常直到晚期才被诊断出来,导致预后不良。本研究提出了一种机器学习方法,基于从组织学图像中提取的纹理特征对肿瘤等级进行分类,为预后和治疗决策提供见解。Qiu等人在2019年的一项研究中证明了基于机器学习的CT纹理分析在预测PDAC组织病理分级方面的有效性,准确率达到86%,灵敏度为78%,特异性为95%。同样,本研究采用苏木精、伊红和梅-格伦瓦尔德-吉姆萨染色获得的四个肿瘤级别的图像——正常、ⅰ级、ⅱ级和ⅲ级。提取纹理特征,包括灰度共生矩阵(GLCM)属性、局部二值模式(LBP)特征和定向梯度直方图(HOG)特征,为每张图像创建特征向量。利用这些向量训练带有纠错输出码(ECOC)的支持向量机(SVM)模型用于多类分类,并进行超参数优化以提高模型性能。交叉验证用于评估模型,准确度为53%。虽然这种准确性不是最优的,但它代表了PDAC自动肿瘤分类的基础步骤。该模型在临床实践中仍然可以作为一个有用的工具,特别是当与其他诊断方法一起使用或作为进一步改进的基线时。应用主成分分析(PCA)可视化特征分布,并生成混淆矩阵来评估分类性能。结果表明,尽管精度不高,但提取的纹理特征具有区分肿瘤等级的潜力,为自动分类和支持临床决策提供了起点。该研究引入了一种创新的PDAC肿瘤分级方法,解决了对改进诊断工具的迫切需求。虽然需要进一步的工作来优化性能,但这项研究为未来可能影响临床决策和患者预后的进展奠定了基础。引文格式:奇迹托马斯。基于机器学习的胰腺导管腺癌肿瘤分级:探索用于自动分类和临床决策支持的纹理特征[摘要]。摘自:《2025年美国癌症研究协会年会论文集》;第二部分(最新进展,临床试验,并邀请s);2025年4月25日至30日;费城(PA): AACR;中国癌症杂志,2015;35(8):391 - 391。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abstract LB118: Machine learning-based tumor grading in pancreatic ductal adenocarcinoma: Exploring texture features for automated classification and clinical decision support
Pancreatic ductal adenocarcinoma (PDAC) is an aggressive malignancy and a leading cause of cancer-related death in the U.S. Due to late-onset symptoms, it often remains undiagnosed until advanced stages, resulting in poor prognosis. This study presents a machine learning approach to classify tumor grades based on texture features extracted from histological images, offering insights into prognosis and treatment decisions. A 2019 study by Qiu et al. demonstrated the effectiveness of machine learning-based CT texture analysis in predicting PDAC histopathological grades, achieving 86% accuracy, 78% sensitivity, and 95% specificity. Similarly, this work utilizes images from four tumor grades—Normal, Grade I, Grade II, and Grade III—obtained from Hematoxylin and Eosin and May-Grunwald-Giemsa staining. Texture features, including Gray-Level Co-occurrence Matrix (GLCM) properties, Local Binary Pattern (LBP) features, and Histogram of Oriented Gradients (HOG), were extracted to create a feature vector for each image. These vectors were used to train a Support Vector Machine (SVM) model with Error-Correcting Output Codes (ECOC) for multiclass classification, with hyperparameter optimization to improve model performance. Cross-validation was used to evaluate the model, yielding an accuracy of 53%. Although this accuracy is suboptimal, it represents a foundational step in automated PDAC tumor classification. The model could still serve as a useful tool in clinical practice, especially when used alongside other diagnostic methods or as a baseline for further improvements. Principal Component Analysis (PCA) was applied to visualize the feature distribution, and a confusion matrix was generated to assess classification performance. Results indicate that, despite the modest accuracy, the extracted texture features have potential for distinguishing between tumor grades, providing a starting point for automated classification and supporting clinical decision-making. The study introduces an innovative approach to PDAC tumor grading, addressing the urgent need for improved diagnostic tools. While further work is needed to optimize performance, this research sets the stage for future advancements that could impact clinical decision-making and patient outcomes. Citation Format: Miracle Thomas. Machine learning-based tumor grading in pancreatic ductal adenocarcinoma: Exploring texture features for automated classification and clinical decision support [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2025; Part 2 (Late-Breaking, Clinical Trial, and Invited s); 2025 Apr 25-30; Chicago, IL. Philadelphia (PA): AACR; Cancer Res 2025;85(8_Suppl_2): nr LB118.
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来源期刊
Cancer research
Cancer research 医学-肿瘤学
CiteScore
16.10
自引率
0.90%
发文量
7677
审稿时长
2.5 months
期刊介绍: Cancer Research, published by the American Association for Cancer Research (AACR), is a journal that focuses on impactful original studies, reviews, and opinion pieces relevant to the broad cancer research community. Manuscripts that present conceptual or technological advances leading to insights into cancer biology are particularly sought after. The journal also places emphasis on convergence science, which involves bridging multiple distinct areas of cancer research. With primary subsections including Cancer Biology, Cancer Immunology, Cancer Metabolism and Molecular Mechanisms, Translational Cancer Biology, Cancer Landscapes, and Convergence Science, Cancer Research has a comprehensive scope. It is published twice a month and has one volume per year, with a print ISSN of 0008-5472 and an online ISSN of 1538-7445. Cancer Research is abstracted and/or indexed in various databases and platforms, including BIOSIS Previews (R) Database, MEDLINE, Current Contents/Life Sciences, Current Contents/Clinical Medicine, Science Citation Index, Scopus, and Web of Science.
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