Title of article :
Comparison of Diagnosis Accuracy between a Backpropagation Artificial Neural Network Model and Linear Regression in Digestive Disease Patients: an Empirical Research
Author/Authors :
Wei, Wei Beijing Friendship Hospital - Capital Medical University - National Clinical Research Center for Digestive Diseases - Beijing, China , Yang, Xu School of Computer Science and Technology - Beijing Institute of Technology - Beijing, China
Abstract :
A Noninvasive diagnosis model for digestive diseases is the vital issue for the current clinical research. Our systematic
review is aimed at demonstrating diagnosis accuracy between the BP-ANN algorithm and linear regression in digestive disease
patients, including their activation function and data structure. Methods. We reported the systematic review according to the
PRISMA guidelines. We searched related articles from seven electronic scholarly databases for comparison of the diagnosis
accuracy focusing on BP-ANN and linear regression. The characteristics, patient number, input/output marker, diagnosis
accuracy, and results/conclusions related to comparison were extracted independently based on inclusion criteria. Results. Nine
articles met all the criteria and were enrolled in our review. Of those enrolled articles, the publishing year ranged from 1991 to
2017. The sample size ranged from 42 to 3222 digestive disease patients, and all of the patients showed comparable biomarkers
between the BP-ANN algorithm and linear regression. According to our study, 8 literature demonstrated that the BP-ANN
model is superior to linear regression in predicting the disease outcome based on AUROC results. One literature reported linear
regression to be superior to BP-ANN for the early diagnosis of colorectal cancer. Conclusion. The BP-ANN algorithm and linear
regression both had high capacity in fitting the diagnostic model and BP-ANN displayed more prediction accuracy for the
noninvasive diagnosis model of digestive diseases. We compared the activation functions and data structure between BP-ANN
and linear regression for fitting the diagnosis model, and the data suggested that BP-ANN was a comprehensive
recommendation algorithm.
Keywords :
Empirical , BP-ANN , PRISMA , China
Journal title :
Computational and Mathematical Methods in Medicine