Computer-Aided Prediction of Long-Term Prognosis of Patients with Ulcerative Colitis after Cytoapheresis Therapy
Tetsuro Takayama
Susumu Okamoto
Tadakazu Hisamatsu
Makoto Naganuma
Katsuyoshi Matsuoka
Shinta Mizuno
Rieko Bessho
Toshifumi Hibi
Takanori Kanai
10.1371/journal.pone.0131197
https://plos.figshare.com/articles/dataset/_Computer_Aided_Prediction_of_Long_Term_Prognosis_of_Patients_with_Ulcerative_Colitis_after_Cytoapheresis_Therapy_/1463629
<div><p>Cytoapheresis (CAP) therapy is widely used in ulcerative colitis (UC) patients with moderate to severe activity in Japan. The aim of this study is to predict the need of operation after CAP therapy of UC patients on an individual level using an artificial neural network system (ANN). Ninety UC patients with moderate to severe activity were treated with CAP. Data on the patients’ demographics, medication, clinical activity index (CAI) and efficacy of CAP were collected. Clinical data were divided into training data group and validation data group and analyzed using ANN to predict individual outcomes. The sensitivity and specificity of predictive expression by ANN were 0.96 and 0.97, respectively. Events of admission, operation, and use of immunomodulator, and efficacy of CAP were significantly correlated to the outcome. Requirement of operation after CAP therapy was successfully predicted by using ANN. This newly established ANN strategy would be used as powerful support of physicians in the clinical practice.</p></div>
2015-06-25 02:55:48
cai
UC patients
training data group
CAP therapy
Cytoapheresis Therapy Cytoapheresis
validation data group
ann