A CBR framework with gradient boosting based feature selection for lung cancer subtype classification

2017 ◽  
Vol 86 ◽  
pp. 98-106 ◽  
Author(s):  
Juan Ramos-González ◽  
Daniel López-Sánchez ◽  
Jose A. Castellanos-Garzón ◽  
Juan F. de Paz ◽  
Juan M. Corchado
Author(s):  
Kwang Ho Park ◽  
Erdenebileg Batbaatar ◽  
Yongjun Piao ◽  
Nipon Theera-Umpon ◽  
Keun Ho Ryu

Hematopoietic cancer is a malignant transformation in immune system cells. Hematopoietic cancer is characterized by the cells that are expressed, so it is usually difficult to distinguish its heterogeneities in the hematopoiesis process. Traditional approaches for cancer subtyping use statistical techniques. Furthermore, due to the overfitting problem of small samples, in case of a minor cancer, it does not have enough sample material for building a classification model. Therefore, we propose not only to build a classification model for five major subtypes using two kinds of losses, namely reconstruction loss and classification loss, but also to extract suitable features using a deep autoencoder. Furthermore, for considering the data imbalance problem, we apply an oversampling algorithm, the synthetic minority oversampling technique (SMOTE). For validation of our proposed autoencoder-based feature extraction approach for hematopoietic cancer subtype classification, we compared other traditional feature selection algorithms (principal component analysis, non-negative matrix factorization) and classification algorithms with the SMOTE oversampling approach. Additionally, we used the Shapley Additive exPlanations (SHAP) interpretation technique in our model to explain the important gene/protein for hematopoietic cancer subtype classification. Furthermore, we compared five widely used classification algorithms, including logistic regression, random forest, k-nearest neighbor, artificial neural network and support vector machine. The results of autoencoder-based feature extraction approaches showed good performance, and the best result was the SMOTE oversampling-applied support vector machine algorithm consider both focal loss and reconstruction loss as the loss function for autoencoder (AE) feature selection approach, which produced 97.01% accuracy, 92.60% recall, 99.52% specificity, 93.54% F1-measure, 97.87% G-mean and 95.46% index of balanced accuracy as subtype classification performance measures.


2020 ◽  
Vol 38 (5) ◽  
pp. 5847-5855 ◽  
Author(s):  
Hina Shakir ◽  
Haroon Rasheed ◽  
Tariq Mairaj Rasool Khan

2019 ◽  
Vol 13 (3) ◽  
pp. 543-548
Author(s):  
Xiaomei Li ◽  
Xiaopeng Dong ◽  
Jian Lian ◽  
Yan Zhang ◽  
Jinming Yu

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