Title of article :
Construction and Validation of a Lung Cancer Diagnostic Model Based on 6-Gene Methylation Frequency in Blood, Clinical Features, and Serum Tumor Markers
Author/Authors :
Kang, Chunyan Department of Pathology - Henan Medical College - Zhengzhou - Henan Province, China , Wang, Dandan Department of Breast Surgery - The Second Affiliated Hospital of Zhengzhou - Zhengzhou - Henan Province, China , Zhang, Xiuzhi Department of Pathology - Henan Medical College - Zhengzhou - Henan Province, China , Wang, Lingxiao Department of Pathology - Henan Medical College - Zhengzhou - Henan Province, China , Wang, Fengxiang Department of Information and Telemedicine - The Fifth Affiliated Hospital of Zhengzhou University - Zhengzhou - Henan Province, China , Chen, Jie Department of Pathology - Henan Medical College - Zhengzhou - Henan Province, China
Abstract :
Lung cancer has a high mortality rate. Promoting early diagnosis and screening of lung cancer is the most effective way to enhance
the survival rate of lung cancer patients. Through computer technology, a comprehensive evaluation of genetic testing results and
basic clinical information of lung cancer patients could effectively diagnose early lung cancer and indicate cancer risks. This study
retrospectively collected 70 pairs of lung cancer tissue samples and normal human tissue samples. The methylation frequencies of 6
genes (FHIT, p16, MGMT, RASSF1A, APC, DAPK) in lung cancer patients, the basic clinical information, and tumor marker levels
of these patients were analyzed. Then, the python package “sklearn” was employed to build a support vector machine (SVM)
classifier which performed 10-fold cross-validation to construct diagnostic models that could identify lung cancer risk of
suspected cases. Receiver operation characteristic (ROC) curves were drawn, and the performance of the combined diagnostic
model based on several factors (clinical information, tumor marker level, and methylation frequency of 6 genes in blood) was
shown to be better than that of models with only one pathological feature. The AUC value of the combined model was 0.963,
and the sensitivity, specificity, and accuracy were 0.900, 0.971, and 0.936, respectively. The above results revealed that the
diagnostic model based on these features was highly reliable, which could screen and diagnose suspected early lung cancer
patients, contributing to increasing diagnosis rate and survival rate of lung cancer patients.
Keywords :
6-Gene , Blood , Tumor , NSCLC
Journal title :
Computational and Mathematical Methods in Medicine