Abstract

Lung cancer (LC) is one of the most serious cancers threatening human health. Histopathological examination is the gold standard for qualitative and clinical staging of lung tumors. However, the process for doctors to examine thousands of histopathological images is very cumbersome, especially for doctors with less experience. Therefore, objective pathological diagnosis results can effectively help doctors choose the most appropriate treatment mode, thereby improving the survival rate of patients. For the current problem of incomplete experimental subjects in the computer-aided diagnosis of lung cancer subtypes, this study included relatively rare lung adenosquamous carcinoma (ASC) samples for the first time, and proposed a computer-aided diagnosis method based on histopathological images of ASC, lung squamous cell carcinoma (LUSC) and small cell lung carcinoma (SCLC). Firstly, the multidimensional features of 121 LC histopathological images were extracted, and then the relevant features (Relief) algorithm was used for feature selection. The support vector machines (SVMs) classifier was used to classify LC subtypes, and the receiver operating characteristic (ROC) curve and area under the curve (AUC) were used to make it more intuitive evaluate the generalization ability of the classifier. Finally, through a horizontal comparison with a variety of mainstream classification models, experiments show that the classification effect achieved by the Relief-SVM model is the best. The LUSC-ASC classification accuracy was 73.91%, the LUSC-SCLC classification accuracy was 83.91% and the ASC-SCLC classification accuracy was 73.67%. Our experimental results verify the potential of the auxiliary diagnosis model constructed by machine learning (ML) in the diagnosis of LC.

Highlights

  • Lung cancer (LC) is one of the most common malignant tumors worldwide [1]–[3]

  • SELECTION OF THE FEATURE SELECTION METHOD, KERNEL FUNCTION AND OPTIMIZATION ALGORITHM In this study, no feature selection, LASSO feature selection, Relief feature selection and linear discriminant analysis (LDA) feature dimension reduction were compared, and four kernel functions and three optimization algorithms were used to attempt to construct the best auxiliary diagnostic model

  • The three optimization algorithms include grid search-support vector machines (SVMs) (GS-SVM), particle swarm optimization-SVM (PSO-SVM), and genetic algorithms based on SVM (GA-SVM)

Read more

Summary

INTRODUCTION

Lung cancer (LC) is one of the most common malignant tumors worldwide [1]–[3]. According to the 2018 International Agency for Research on Cancer statistics, there will be 2.1 million new cases of LC and 1.8 million deaths worldwide [4]. Seven texture analysis methods are used to extract 265-dimensional features of LC histopathological images, and the relevant features (Relief) algorithm is used for feature selection. As the traditional LBP algorithm cannot efficiently extract the texture features from the large-scale image structure, the improved LBP operator in the circular domain is adopted in this study to allow the existence of N pixels in the circular domain with a radius of R. Naive Bayesian (NB) classifier [13] to find the best classification model

PERFORMANCE EVALUATION
DISCUSSIONS
CONCLUSION
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call