Literature DB >> 27354395

Logic Learning Machine and standard supervised methods for Hodgkin's lymphoma prognosis using gene expression data and clinical variables.

Stefano Parodi1,2, Chiara Manneschi3,2, Damiano Verda2, Enrico Ferrari2, Marco Muselli1.   

Abstract

This study evaluates the performance of a set of machine learning techniques in predicting the prognosis of Hodgkin's lymphoma using clinical factors and gene expression data. Analysed samples from 130 Hodgkin's lymphoma patients included a small set of clinical variables and more than 54,000 gene features. Machine learning classifiers included three black-box algorithms ( k-nearest neighbour, Artificial Neural Network, and Support Vector Machine) and two methods based on intelligible rules (Decision Tree and the innovative Logic Learning Machine method). Support Vector Machine clearly outperformed any of the other methods. Among the two rule-based algorithms, Logic Learning Machine performed better and identified a set of simple intelligible rules based on a combination of clinical variables and gene expressions. Decision Tree identified a non-coding gene ( XIST) involved in the early phases of X chromosome inactivation that was overexpressed in females and in non-relapsed patients. XIST expression might be responsible for the better prognosis of female Hodgkin's lymphoma patients.

Entities:  

Keywords:  Decision Tree; Hodgkin’s lymphoma; Logic Learning Machine; Support Vector Machine; artificial neural network; cancer prognosis

Mesh:

Year:  2016        PMID: 27354395     DOI: 10.1177/1460458216655188

Source DB:  PubMed          Journal:  Health Informatics J        ISSN: 1460-4582            Impact factor:   2.681


  3 in total

1.  Identifying Environmental and Social Factors Predisposing to Pathological Gambling Combining Standard Logistic Regression and Logic Learning Machine.

Authors:  Stefano Parodi; Corrado Dosi; Antonella Zambon; Enrico Ferrari; Marco Muselli
Journal:  J Gambl Stud       Date:  2017-12

2.  Translational Applications of Artificial Intelligence and Machine Learning for Diagnostic Pathology in Lymphoid Neoplasms: A Comprehensive and Evolutive Analysis.

Authors:  Julia Moran-Sanchez; Antonio Santisteban-Espejo; Miguel Angel Martin-Piedra; Jose Perez-Requena; Marcial Garcia-Rojo
Journal:  Biomolecules       Date:  2021-05-25

3.  Analyzing gene expression data for pediatric and adult cancer diagnosis using logic learning machine and standard supervised methods.

Authors:  Damiano Verda; Stefano Parodi; Enrico Ferrari; Marco Muselli
Journal:  BMC Bioinformatics       Date:  2019-11-22       Impact factor: 3.169

  3 in total

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