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Classification of skin cancer based on fluorescence lifetime imaging and machine learning

机译:基于荧光寿命成像和机器学习的皮肤癌分类

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To evaluate the development stage of skin cancer accurately is very important for prompt treatment and clinical prognosis. In this paper, we used the FLIM system based on time-correlated single-photon counting (TCSPC) to acquire fluorescence lifetime images of skin tissues. In the cases of full sample data, three kinds of sample set partitioning methods, including bootstrapping method, hold-out method and K-fold cross-validation method, were used to divide the samples into calibration set and prediction set, respectively. Then the binary classification models for skin cancer were established based on random forest (RF), K-nearest neighbor (KNN), support vector machine (SVM) and linear discriminant analysis (LDA) respectively. The results showed that FLIM combining with appropriate machine learning algorithms can achieve early and advanced canceration classification of skin cancer, which could provide reference for the multi-classification, clinical staging and diagnosis of skin cancer.
机译:为了评价皮肤癌的发展阶段,对于迅速治疗和临床预后,非常重要。在本文中,我们使用基于时间相关的单光子计数(TCSPC)的FLIM系统来获取皮肤组织的荧光寿命图像。在完整采样数据的情况下,使用三种样本集分区方法,包括自动启动方法,保持方法和k折交叉验证方法,分别将样本分成校准集和预测集。然后基于随机林(RF),K最近邻(KNN),支持向量机(SVM)和线性判别分析(LDA)建立皮肤癌的二元分类模型。结果表明,与适当的机器学习算法混合可以实现皮肤癌的早期和晚期癌变分类,这可以为皮肤癌的多分类,临床分期和诊断提供参考。

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