The classification of functional data has drawn much attention in recent years.The main challenge is representing infinite-dimensional functional data by finite-dimensional features while utilizing those features to a...The classification of functional data has drawn much attention in recent years.The main challenge is representing infinite-dimensional functional data by finite-dimensional features while utilizing those features to achieve better classification accuracy.In this paper,we propose a mean-variance-based(MV)feature weighting method for classifying functional data or functional curves.In the feature extraction stage,each sample curve is approximated by B-splines to transfer features to the coefficients of the spline basis.After that,a feature weighting approach based on statistical principles is introduced by comprehensively considering the between-class differences and within-class variations of the coefficients.We also introduce a scaling parameter to adjust the gap between the weights of features.The new feature weighting approach can adaptively enhance noteworthy local features while mitigating the impact of confusing features.The algorithms for feature weighted K-nearest neighbor and support vector machine classifiers are both provided.Moreover,the new approach can be well integrated into existing functional data classifiers,such as the generalized functional linear model and functional linear discriminant analysis,resulting in a more accurate classification.The performance of the mean-variance-based classifiers is evaluated by simulation studies and real data.The results show that the newfeatureweighting approach significantly improves the classification accuracy for complex functional data.展开更多
Cancer is a major threat to human health and causes death worldwide.Research on the role of radiotherapy(RT)in the treatment of cancer is progressing;however,RT not only causes fatal DNA damage to tumor cells,but also...Cancer is a major threat to human health and causes death worldwide.Research on the role of radiotherapy(RT)in the treatment of cancer is progressing;however,RT not only causes fatal DNA damage to tumor cells,but also affects the interactions between tumor cells and different components of the tumor microenvironment(TME),including immune cells,fibroblasts,macrophages,extracellular matrix,and some soluble products.Some cancer cells can survive radiation and have shown strong resistance to radiation through interaction with the TME.Currently,the complex relationships between the tumor cells and cellular components that play major roles in various TMEs are poorly understood.This review explores the relationship between RT and cell-cell communication in the TME from the perspective of immunity and hypoxia and aims to identify new RT biomarkers and treatment methods in lung cancer to improve the current status of unstable RT effect and provide a theoretical basis for further lung cancer RT sensitization research in the future.展开更多
基金the National Social Science Foundation of China(Grant No.22BTJ035).
文摘The classification of functional data has drawn much attention in recent years.The main challenge is representing infinite-dimensional functional data by finite-dimensional features while utilizing those features to achieve better classification accuracy.In this paper,we propose a mean-variance-based(MV)feature weighting method for classifying functional data or functional curves.In the feature extraction stage,each sample curve is approximated by B-splines to transfer features to the coefficients of the spline basis.After that,a feature weighting approach based on statistical principles is introduced by comprehensively considering the between-class differences and within-class variations of the coefficients.We also introduce a scaling parameter to adjust the gap between the weights of features.The new feature weighting approach can adaptively enhance noteworthy local features while mitigating the impact of confusing features.The algorithms for feature weighted K-nearest neighbor and support vector machine classifiers are both provided.Moreover,the new approach can be well integrated into existing functional data classifiers,such as the generalized functional linear model and functional linear discriminant analysis,resulting in a more accurate classification.The performance of the mean-variance-based classifiers is evaluated by simulation studies and real data.The results show that the newfeatureweighting approach significantly improves the classification accuracy for complex functional data.
基金supported by the National Natural Science Foundation of China(No.82072594 to YT,Nos.82073097 and 81874139 to SL)Natural Science Foundation of Hunan Province,and Hunan Provincial Key Area Research&Development Programs(No.2021SK2013 to YT)
文摘Cancer is a major threat to human health and causes death worldwide.Research on the role of radiotherapy(RT)in the treatment of cancer is progressing;however,RT not only causes fatal DNA damage to tumor cells,but also affects the interactions between tumor cells and different components of the tumor microenvironment(TME),including immune cells,fibroblasts,macrophages,extracellular matrix,and some soluble products.Some cancer cells can survive radiation and have shown strong resistance to radiation through interaction with the TME.Currently,the complex relationships between the tumor cells and cellular components that play major roles in various TMEs are poorly understood.This review explores the relationship between RT and cell-cell communication in the TME from the perspective of immunity and hypoxia and aims to identify new RT biomarkers and treatment methods in lung cancer to improve the current status of unstable RT effect and provide a theoretical basis for further lung cancer RT sensitization research in the future.