Kevin Saruni Tipatet, Katie Hanna, Liam Davison-Gates, Mario Kerst, Andrew Downes
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引用次数: 0
摘要
本研究探讨了如何将拉曼光谱(RS)与机器学习相结合,利用血浆样本对乳腺癌进行早期检测和亚型分类。我们进行了详细的光谱分析,确定了与癌症生物标志物相关的重要光谱模式。我们的研究结果表明了在 Ia 期对四种主要乳腺癌亚型进行分类的潜力,平均灵敏度和特异度分别为 90% 和 95%,交叉验证的宏观平均曲线下面积 (AUC) 为 0.98。这项研究凸显了将振动光谱与机器学习相结合的努力,通过一种无创、个性化的方法来早期检测和监测疾病进展,从而提高癌症诊断水平。这项研究是同类研究中首次利用 RS 和机器学习对 Ia 期的四种主要乳腺癌亚型进行分类。
Subtype-Specific Detection in Stage Ia Breast Cancer: Integrating Raman Spectroscopy, Machine Learning, and Liquid Biopsy for Personalised Diagnostics.
This study explores the integration of Raman spectroscopy (RS) with machine learning for the early detection and subtyping of breast cancer using blood plasma samples. We performed detailed spectral analyses, identifying significant spectral patterns associated with cancer biomarkers. Our findings demonstrate the potential for classifying the four major subtypes of breast cancer at stage Ia with an average sensitivity and specificity of 90% and 95%, respectively, and a cross-validated macro-averaged area under the curve (AUC) of 0.98. This research highlights efforts to integrate vibrational spectroscopy with machine learning, enhancing cancer diagnostics through a non-invasive, personalised approach for early detection and monitoring disease progression. This study is the first of its kind to utilise RS and machine learning to classify the four major breast cancer subtypes at stage Ia.