Comparison study between neural network model and multiple linear regression in predicting pulmonary artery obstruction index in pulmonary embolism / 中华放射学杂志
Chinese Journal of Radiology
; (12): 16-20, 2019.
Article
in Zh
| WPRIM
| ID: wpr-745205
Responsible library:
WPRO
ABSTRACT
Objective To compare the predictive capability of multiple linear regression (MLR)and neural network model (NNM) for pulmonary artery obstruction index (PAOI) in pulmonary embolism.Methods One hundred and forty-seven APE patients (79 male,68 female) were collected from March 2015 to July 2016 in our hospital and randomly divided into training group and testing group with the ratio of 3 ∶ 1.Four indexes,including total volume (V),total length (L),total degree of embolism (D) and total number of clots (N) were calculated by computer assisted detection.Qanadli index (Q) as CT PAOI was calculated manually.With SPSS 14.2 modeler,the predictive value of Qanadli index ((Q)) was calculated by MLR and NNM respectively,with Qanadli index as dependent variable and V,L,D,N as independent variables.SPSS 22.0 Spearman test was used to analyze the correlation between (Q) and Q.Mean absolute error (MAE),mean relative error (MRE),root mean square error (RMSE) were used to quantify the accuracies of two methods.Results MLR equation was (Q)=10.98+ 1.37×V+0.06×L,model fitting was 0.764.NNM included one hidden layer and two neurons with accuracy of 0.868.In training group,the correlation between (Q) and Q in NNM (r=0.932,P<0.01) was higher than MLR (r=0.879,P<0.01);in testing group,the correlation between (Q) and Q in NNM (r=0.875,P<0.01) was higher than MLR (r=0.868,P<0.01).In training group,MAE,MRE and RMSE of NNM (5.144,0.274,6.957) were significantly lower (t=3.402,P=0.002) than MLR (6.784,0.282,8.700);in testing group,MAE,MRE and RMSE of NNM (6.643,0.312,9.195) were significantly lower (t=3.383,P=0.002) than MLR (8.505,0.334,10.361).Conclusion NNM is a better model in predicting CT pulmonary artery obstruction index of APE patients.
Full text:
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Index:
WPRIM
Type of study:
Prognostic_studies
Language:
Zh
Journal:
Chinese Journal of Radiology
Year:
2019
Type:
Article