Neural network models to predict ulcerative colitis activity using standard clinico-biological parameters
Main Author: | Popa, Iolanda Valentina |
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Format: | Dataset |
Terbitan: |
Mendeley
, 2020
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Subjects: | |
Online Access: |
https:/data.mendeley.com/datasets/gpsvsb563v |
Daftar Isi:
- R scripts for predicting ulcerative colitis endoscopic activity through standard clinico-biological parameters using three neural network models are found in the files provided. First binary model to predict active/inactive endoscopic disease using seven categorical and 13 continuous input variables is built and tested in UCDiseaseActivity_1stNNModel.R script. Console outputs for this script are shown in UCDiseaseActivity_1stNNModel_ConsoleOutput.txt. Second binary model to predict active/inactive endoscopic disease using 12 biological input variables is built and tested in UCDiseaseActivity_2ndNNModel.R script. Console outputs for this script are shown in UCDiseaseActivity_2ndNNModel_ConsoleOutput.txt. The multiclass model to predict Mayo endoscopic score using seven categorical and 13 continuous input variables is built and tested in UCDiseaseActivity_3rdNNModel.R script. Console outputs for this script are shown in UCDiseaseActivity_3rdNNModel_ConsoleOutput.txt.