Classifying diseases by using biological features to identify potential nosological models

Author:

Prieto Santamaría Lucía,García del Valle Eduardo P.,Zanin Massimiliano,Hernández Chan Gandhi Samuel,Pérez Gallardo Yuliana,Rodríguez-González Alejandro

Abstract

AbstractEstablished nosological models have provided physicians an adequate enough classification of diseases so far. Such systems are important to correctly identify diseases and treat them successfully. However, these taxonomies tend to be based on phenotypical observations, lacking a molecular or biological foundation. Therefore, there is an urgent need to modernize them in order to include the heterogeneous information that is produced in the present, as could be genomic, proteomic, transcriptomic and metabolic data, leading this way to more comprehensive and robust structures. For that purpose, we have developed an extensive methodology to analyse the possibilities when it comes to generate new nosological models from biological features. Different datasets of diseases have been considered, and distinct features related to diseases, namely genes, proteins, metabolic pathways and genetical variants, have been represented as binary and numerical vectors. From those vectors, diseases distances have been computed on the basis of several metrics. Clustering algorithms have been implemented to group diseases, generating different models, each of them corresponding to the distinct combinations of the previous parameters. They have been evaluated by means of intrinsic metrics, proving that some of them are highly suitable to cover new nosologies. One of the clustering configurations has been deeply analysed, demonstrating its quality and validity in the research context, and further biological interpretations have been made. Such model was particularly generated by OPTICS clustering algorithm, by studying the distance between diseases based on gene sharedness and following cosine index metric. 729 clusters were formed in this model, which obtained a Silhouette coefficient of 0.43.

Funder

Ministerio de Ciencia, Innovación y Universidades

Comunidad de Madrid

H2020 European Research Council

Agencia Estatal de Investigación

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

Reference48 articles.

1. DeLacy, M. Nosology, mortality, and disease theory in the eighteenth century. J. Hist. Med. Allied Sci. 54, 261–284 (1999).

2. Genera Morborum—The Linnean Collections. http://linnean-online.org/120052/ (2019).

3. Census, U. S. B. of the & Davis, W. H. Manual of the International List of Causes of Death Based on the Second Decennial Revision by the International Commission, Paris, July 1 to 3, 1909. (U.S. Government Printing Office, 1918).

4. WHO | International Classification of Diseases, 11th Revision (ICD-11). WHO http://www.who.int/classifications/icd/en/ (2019).

5. MeSH Browser. https://meshb.nlm.nih.gov/search (2019).

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