Predicting psoriasis using routine laboratory tests with random forest

Author:

Zhou Jing,Li Yuzhen,Guo XuanORCID

Abstract

Psoriasis is a chronic inflammatory skin disease that affects approximately 125 million people worldwide. It has significant impacts on both physical and emotional health-related quality of life comparable to other major illnesses. Accurately prediction of psoriasis using biomarkers from routine laboratory tests has important practical values. Our goal is to derive a powerful predictive model for psoriasis disease based on only routine hospital tests. We collected a data set including 466 psoriasis patients and 520 healthy controls with 81 variables from only laboratory routine tests, such as age, total cholesterol, HDL cholesterol, blood pressure, albumin, and platelet distribution width. In this study, Boruta feature selection method was applied to select the most relevant features, with which a Random Forest model was constructed. The model was tested with 30 repetitions of 10-fold cross-validation. Our classification model yielded an average accuracy of 86.9%. 26 notable features were selected by Boruta, among which 15 features are confirmed from previous studies, and the rest are worth further investigations. The experimental results demonstrate that the machine learning approach has good potential in predictive modeling for the psoriasis disease given the information only from routine hospital tests.

Funder

national natural science foundation of china

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference33 articles.

1. A correlative study between platelet count, mean platelet volume and red cell distribution width with the disease severity index in psoriasis patients;Vijayashree Raghavan;J. Clin. diagnostic Res. JCDR,2017

2. The immunogenetics of psoriasis: a comprehensive review;Jamie L Harden;J. Autoimmun,2015

3. Erythroid disturbances before and after treatment of Portuguese psoriasis vulgaris patients;Susana Coimbra;Am. J. Clin. Dermatol,2012

4. Random forest based erythema grading for psoriasis;Mithun Das Gupta;2015 IEEE 12th International Symposium on Biomedical Imaging (ISBI),2015

5. Delgado David, Ersboll B, and Carstensen JM, “An image based system to automatically and objectively score the degree of redness and scaling in psoriasis lesions,” in 13th Danish Conference on Image Analysis and Pattern Recognition, 2004, vol. 46, pp. 130–137.

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