Predicting lymphoma development by exploiting genetic variants and clinical findings in a machine learning-based methodology with ensemble classifiers in a cohort of Sjögren's syndrome patients

Επιστημονική δημοσίευση - Άρθρο Περιοδικού uoadl:3035247 23 Αναγνώσεις

Μονάδα:
Ερευνητικό υλικό ΕΚΠΑ
Τίτλος:
Predicting lymphoma development by exploiting genetic variants and clinical findings in a machine learning-based methodology with ensemble classifiers in a cohort of Sjögren's syndrome patients
Γλώσσες Τεκμηρίου:
Αγγλικά
Περίληψη:
Lymphoma development constitutes one of the most serious clinico-pathological manifestations of patients with Sjögren's Syndrome (SS). Over the last decades the risk for lymphomagenesis in SS patients has been studied aiming to identify novel biomarkers and risk factors predicting lymphoma development in this patient population. Objective: The current study aims to explore whether genetic susceptibility profiles of SS patients along with known clinical, serological and histological risk factors enhance the accuracy of predicting lymphoma development in this patient population. Methods: The potential predicting role of both genetic variants, clinical and laboratory risk factors were investigated through a Machine Learning-based (ML) framework which encapsulates ensemble classifiers. Results: Ensemble methods empower the classification accuracy with approaches which are sensitive to minor perturbations in the training phase. The evaluation of the proposed methodology based on a 10-fold stratified cross validation procedure yielded considerable results in terms of balanced accuracy (GB: 0.7780 ± 0.1514, RF Gini: 0.7626 ± 0.1787, RF Entropy: 0.7590 ± 0.1837). Conclusions: The initial clinical, serological, histological and genetic findings at an early diagnosis have been exploited in an attempt to establish predictive tools in clinical practice and further enhance our understanding towards lymphoma development in SS. © 2020 IEEE. Personal use is permitted, but republication/redistribution requires IEEE permission. See https://www.ieee.org/publications/rights/index.html for more information.
Έτος δημοσίευσης:
2020
Συγγραφείς:
Kourou, K.D.
Pezoulas, V.C.
Georga, E.I.
Exarchos, T.
Papaloukas, C.
Voulgarelis, M.
Goules, A.
Nezos, A.
Tzioufas, A.G.
Moutsopoulos, H.M.
Mavragani, C.
Fotiadis, D.I.
Περιοδικό:
IEEE Open Journal of Engineering in Medicine and Biology
Εκδότης:
Institute of Electrical and Electronics Engineers, Inc. (IEEE)
Τόμος:
1
Σελίδες:
49-56
Λέξεις-κλειδιά:
Forecasting; Machine learning; Oncology; Turing machines, Classification accuracy; Clinical practices; Cross validation; Ensemble classifiers; Genetic susceptibility; Lymphoma development; Patient population; Predictive tools, Diagnosis
Επίσημο URL (Εκδότης):
DOI:
10.1109/OJEMB.2020.2965191
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