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Early-Stage Lung Cancer Diagnosis by Deep Learning-Based Spectroscopic Analysis of Circulating Exosomes

机译:早期肺癌诊断深受深层学习的光谱分析循环外索

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Lung cancer has a high mortality rate, but an early diagnosis can contribute to a favorable prognosis. A liquid biopsy that captures and detects tumor-related biomarkers in body fluids has great potential for early-stage diagnosis. Exosomes, nanosized extracellular vesicles found in blood, have been proposed as promising biomarkers for liquid biopsy. Here, we demonstrate an accurate diagnosis of early-stage lung cancer, using deep learning-based surface-enhanced Raman spectroscopy (SERS) of the exosomes. Our approach was to explore the features of cell exosomes through deep learning and figure out the similarity in human plasma exosomes, without learning insufficient human data. The deep learning model was trained with SERS signals of exosomes derived from normal and lung cancer cell lines and could classify them with an accuracy of 95%. In 43 patients, including stage I and II cancer patients, the deep learning model predicted that plasma exosomes of 90.7% patients had higher similarity to lung cancer cell exosomes than the average of the healthy controls. Such similarity was proportional to the progression of cancer. Notably, the model predicted lung cancer with an area under the curve (AUC) of 0.912 for the whole cohort and stage I patients with an AUC of 0.910. These results suggest the great potential of the combination of exosome analysis and deep learning as a method for early-stage liquid biopsy of lung cancer.
机译:肺癌的死亡率很高,但早期诊断可以有助于良好的预后。一种捕获和检测体液中肿瘤相关生物标志物的液体活组织检查具有巨大的早期诊断潜力。外泌体,血液中发现的纳米粒子细胞外囊泡,已提出作为液检的有前途的生物标志物。在这里,我们证明了使用基于深度学习的表面增强的拉曼光谱(SERS)的前期肺癌的准确诊断。我们的方法是通过深入学习来探讨细胞外索体的特征,并弄清楚人血浆外泌体中的相似性,而不学习人类数据不足。深度学习模型培训,具有源自正常和肺癌细胞系的外索物体的SERS信号,可以将它们分类为95%。在43名患者中,包括阶段和II癌症患者,深度学习模式预测,90.7%患者的血浆外来患者与肺癌细胞外来的相似性比健康对照的平均值更高。这种相似性与癌症的进展成比例。值得注意的是,模型预测肺癌的肺癌为0.912的曲线(AUC)为整个群组和阶段I患者,患有0.910的患者。这些结果表明外出分析和深度学习结合的巨大潜力作为肺癌早期液检检查的一种方法。

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