Machine learning methods in differential diagnosis of ACTH-dependent hypercortisolism

Author:

Golounina O. O.1ORCID,Belaya Zh. E.1ORCID,Voronov K. A.2ORCID,Solodovnikov A. G.3ORCID,Rozhinskaya L. Ya.1ORCID,Melnichenko G. A.1ORCID,Mokrysheva N. G.1ORCID,Dedov I. I.1ORCID

Affiliation:

1. Endocrinology Research Center

2. Statandocs LLC

3. Statandocs LLC; Ural State Medical University

Abstract

AIM: To develop a noninvasive method of differential diagnosis of ACTH-dependent hypercortisolism, as well as to evaluate the effectiveness of an optimal algorithm for predicting the probability of ectopic ACTH syndrome (EAS) obtained using machine learning methods based on the analysis of clinical data.MATERIALS AND METHODS: As part of a single-center, one-stage, cohort study, a retrospective prediction of the probability of EAS among patients with ACTH-dependent hypercortisolism was carried out. Patients were randomly stratified into 2 samples: training (80%) and test (20%). Eleven machine learning algorithms were used to develop predictive models: Linear Discriminant Analysis, Logistic Regression, elastic network (GLMNET), Support Vector machine (SVM Radial), k-nearest neighbors (kNN), Naive Bayes, binary decision tree (CART), C5.0 decision tree algorithms, Bagged CART, Random Forest, Gradient Boosting (Stochastic Gradient Boosting, GBM).RESULTS: The study included 223 patients (163 women, 60 men) with ACTH-dependent hypercortisolism, of which 175 patients with Cushing’s disease (CD), 48 — with EAS. As a result of preliminary data processing and selection of the most informative signs, the final variables for the classification and prediction of EAS were selected: ACTH level at 08:00 hours, potassium level (the minimum value of potassium in the active stage of the disease), 24-h urinary free cortisol, late-night serum cortisol, late-night salivary cortisol, the largest size of pituitary adenoma according to MRI of the brain. The best predictive ability in a training sample of all trained machine learning models for all three final metrics (ROC-AUC (0.867), sensitivity (90%), specificity (56.4%)) demonstrated a model of gradient boosting (Generalized Boosted Modeling, GBM). In the test sample, the AUC, sensitivity and specificity of the model in predicting EAS were 0.920; 77.8% and 97.1%, respectively.CONCLUSION: The prognostic model based on machine learning methods makes it possible to differentiate patients with EAS and CD based on basic clinical results and can be used as a primary screening of patients with ACTH-dependent hypercortisolism.

Publisher

Endocrinology Research Centre

Reference15 articles.

1. Belaya ZE, Rozhinskaya LY, Dragunova NV, et al. Metabolic complications of endogenous Cushing: patient selection for screening. Obes Metabol. 2013; 10(1): 26–31. (In Russ). doi: https://doi.org/10.14341/2071-8713-5068

2. Golounina OO, Belaya ZE, Rozhinskaya LYa, et al. Clinical and laboratory characteristics and results of treatment of patients with ACTH-producing neuroendocrine tumors of various localization. Therapeutic Archive. 2021; 93(10):1171–1178. (In Russ.). doi: https://doi.org/10.26442/00403660.2021.10.201102

3. Golounina OO, Slashchuk KY, Khairieva AV, et al. X-ray and radionuclide imaging in the diagnosis of ACTH-producing neuroendocrine tumors. Medical radiology and radiation safety. 2022; 67(4): 80–88. (In Russ). doi: https://doi.org/10.33266/1024-6177-2022-67-4-80-88

4. Sitkin II, Belaya ZhE, Rozhinskaya LYa, et al. Simultaneous bilateral inferior petrosal sinus blood sampling after desmopressin stimulation in the differential diagnosis of ACTH-dependent Cushing’s syndrome. Diagnostic and Interventional Radiology 2013; 7(3): 57–68. (In Russ). doi: https://doi.org/10.25512/DIR.2013.07.3.06

5. Belaya ZE., Rozhinskaya LYa., Melnichenko GA., et al. The role of prolactin gradient and normalized ACTH/prolactin ratio in the improvement of sensitivity and specificity of selective blood sampling from inferior petrosal sinuses for differential diagnostics of ACTH-dependent hypercorticism. Probl Endokrinol (Mosk) 2013; 59(4): 3–10. (In Russ). doi: https://doi.org/10.14341/probl20135943-10

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