Machine Learning-Based Diagnostic Model for Accurate Prediction of Breast Cancer Using Immunohistochemical Images.

IF 2.1 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Xianqiang Du, Qinglan Wang, Liangqiang Li, Chengye Hong
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引用次数: 0

Abstract

Background: Breast disease, particularly breast cancer, ranks among the most prevalent malignancies affecting women globally. Accurate clinicopathological diagnosis is critical for early detection and prognostication of breast cancer. This study aimed to establish an ultrasensitive diagnostic model utilizing machine learning to assist in breast cancer pathology. Methods: By integrating bioinformatics, we identified four targets-DPP3, KIF4A, TK1, and UBE2C-with significantly higher expression levels in breast cancer tissues compared to adjacent normal tissues, supported by corresponding immunohistochemical staining images obtained from the HPA database. Using machine learning, we developed a pathological image recognition algorithm for breast cancer. Results: Our findings revealed that the diagnostic accuracy for DPP3 and KIF4A was significantly superior, achieving 93% and 92%, respectively, while TK1 and UBE2C attained accuracies of only 76% and 62%. However, the combined diagnostic efficacy of TK1 and UBE2C increased to 99%. Conclusion: This study highlights the potential of machine learning algorithms in the classification and diagnosis of breast cancer pathology images, emphasizing the importance of integrating bioinformatics with machine learning to enhance early diagnosis and facilitate personalized treatment strategies for breast cancer.

基于机器学习的乳腺癌免疫组织化学图像准确预测诊断模型。
背景:乳腺疾病,特别是乳腺癌,是影响全球妇女的最普遍的恶性肿瘤之一。准确的临床病理诊断对乳腺癌的早期发现和预后至关重要。本研究旨在建立一个利用机器学习辅助乳腺癌病理的超灵敏诊断模型。方法:通过整合生物信息学,我们确定了四个靶点- dpp3、KIF4A、TK1和ube2c -在乳腺癌组织中的表达水平明显高于邻近正常组织,并得到了来自HPA数据库的相应免疫组织化学染色图像的支持。利用机器学习,我们开发了一种乳腺癌病理图像识别算法。结果:我们的研究结果显示,DPP3和KIF4A的诊断准确率明显更高,分别达到93%和92%,而TK1和UBE2C的准确率仅为76%和62%。然而,TK1和UBE2C联合诊断的有效性提高到99%。结论:本研究突出了机器学习算法在乳腺癌病理图像分类和诊断中的潜力,强调了将生物信息学与机器学习相结合对于增强乳腺癌早期诊断和促进个性化治疗策略的重要性。
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来源期刊
CiteScore
7.80
自引率
2.90%
发文量
87
审稿时长
3 months
期刊介绍: Cancer Biotherapy and Radiopharmaceuticals is the established peer-reviewed journal, with over 25 years of cutting-edge content on innovative therapeutic investigations to ultimately improve cancer management. It is the only journal with the specific focus of cancer biotherapy and is inclusive of monoclonal antibodies, cytokine therapy, cancer gene therapy, cell-based therapies, and other forms of immunotherapies. The Journal includes extensive reporting on advancements in radioimmunotherapy, and the use of radiopharmaceuticals and radiolabeled peptides for the development of new cancer treatments.
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