Chen Xue, Zhang Yao, Li Xiaohui, Yang Ziheng, Liu Aichun, Yu Xin
Department of Hematology, Harbin Medical University Cancer Hospital, 150 Haping Road, 150081 Harbin, China.
Contributed equally as co-first authors.
Biomed Opt Express. 2021 May 21;12(6):3584-3596. doi: 10.1364/BOE.421333. eCollection 2021 Jun 1.
Diagnosis and staging of multiple myeloma (MM) have been achieved using serum-based laser-induced breakdown spectroscopy (LIBS) in combination with machine learning methods. 130 cases of serum samples collected from registered MM patients in different progressive stages and healthy controls were deposited onto standard quantitative filter papers and ablated with a Q-switched Nd:YAG laser. Emissions of Ca, Na, K, Mg, C, H, O, N and CN were selected for malignancy diagnosis and staging. Multivariate statistics and machine learning methods, including principal component analysis (PCA), k-nearest neighbor (kNN), support vector machine (SVM) and artificial neural network (ANN) classifiers, were used to build the discrimination models. The performances of the classifiers were optimized via 10-fold cross-validation and evaluated in terms of accuracy, sensitivity, specificity, and area under the receiver operating characteristic curves (AUC). The kNN, SVM and ANN classifiers achieved comparable discrimination performances with accuracies of over 90% for both diagnosis and staging of MM. For diagnosis of MM, the classifiers achieved performances with AUC of ∼0.970, sensitivity of ∼0.930 and specificity of ∼0.910; for staging of MM, the corresponding values were AUC of ∼0.970, sensitivity of ∼0.910 and specificity of ∼0.930. These results show that the serum-based LIBS in combination with machine learning methods can serve as a fast, less invasive, cost-effective, and robust technique for diagnosis and staging of human malignancies.
已通过基于血清的激光诱导击穿光谱法(LIBS)结合机器学习方法实现了多发性骨髓瘤(MM)的诊断和分期。从不同进展阶段的注册MM患者和健康对照中收集的130例血清样本被沉积到标准定量滤纸上,并用调Q Nd:YAG激光进行烧蚀。选择Ca、Na、K、Mg、C、H、O、N和CN的发射用于恶性肿瘤的诊断和分期。使用多元统计和机器学习方法,包括主成分分析(PCA)、k近邻(kNN)、支持向量机(SVM)和人工神经网络(ANN)分类器,构建判别模型。通过10倍交叉验证优化分类器的性能,并根据准确性、敏感性、特异性和接收器操作特征曲线下面积(AUC)进行评估。kNN、SVM和ANN分类器在MM的诊断和分期方面均取得了相当的判别性能,准确率均超过90%。对于MM的诊断,分类器的AUC约为0.970,敏感性约为0.930,特异性约为0.910;对于MM的分期,相应的值分别为AUC约为0.970,敏感性约为0.910,特异性约为0.930。这些结果表明,基于血清的LIBS结合机器学习方法可作为一种快速、侵入性小、成本效益高且稳健的技术,用于人类恶性肿瘤的诊断和分期。