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Autoimmune Disease Classification Based on PubMed Text Mining

Autoimmune diseases (AIDs) are often co-associated, and about 25% of patients with one AID tend to develop other comorbid AIDs. Here, we employ the power of datamining to predict the comorbidity of AIDs based on their normalized co-citation in PubMed. First, we validate our technique in a test datas...

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Autores principales: Samuels, Hadas, Malov, Malki, Saha Detroja, Trishna, Ben Zaken, Karin, Bloch, Naamah, Gal-Tanamy, Meital, Avni, Orly, Polis, Baruh, Samson, Abraham O.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9369164/
https://www.ncbi.nlm.nih.gov/pubmed/35893435
http://dx.doi.org/10.3390/jcm11154345
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author Samuels, Hadas
Malov, Malki
Saha Detroja, Trishna
Ben Zaken, Karin
Bloch, Naamah
Gal-Tanamy, Meital
Avni, Orly
Polis, Baruh
Samson, Abraham O.
author_facet Samuels, Hadas
Malov, Malki
Saha Detroja, Trishna
Ben Zaken, Karin
Bloch, Naamah
Gal-Tanamy, Meital
Avni, Orly
Polis, Baruh
Samson, Abraham O.
author_sort Samuels, Hadas
collection PubMed
description Autoimmune diseases (AIDs) are often co-associated, and about 25% of patients with one AID tend to develop other comorbid AIDs. Here, we employ the power of datamining to predict the comorbidity of AIDs based on their normalized co-citation in PubMed. First, we validate our technique in a test dataset using earlier-reported comorbidities of seven knowns AIDs. Notably, the prediction correlates well with comorbidity (R = 0.91) and validates our methodology. Then, we predict the association of 100 AIDs and classify them using principal component analysis. Our results are helpful in classifying AIDs into one of the following systems: (1) gastrointestinal, (2) neuronal, (3) eye, (4) cutaneous, (5) musculoskeletal, (6) kidneys and lungs, (7) cardiovascular, (8) hematopoietic, (9) endocrine, and (10) multiple. Our classification agrees with experimentally based taxonomy and ranks AID according to affected systems and gender. Some AIDs are unclassified and do not associate well with other AIDs. Interestingly, Alzheimer’s disease correlates well with other AIDs such as multiple sclerosis. Finally, our results generate a network classification of autoimmune diseases based on PubMed text mining and help map this medical universe. Our results are expected to assist healthcare workers in diagnosing comorbidity in patients with an autoimmune disease, and to help researchers in identifying common genetic, environmental, and autoimmune mechanisms.
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spelling pubmed-93691642022-08-12 Autoimmune Disease Classification Based on PubMed Text Mining Samuels, Hadas Malov, Malki Saha Detroja, Trishna Ben Zaken, Karin Bloch, Naamah Gal-Tanamy, Meital Avni, Orly Polis, Baruh Samson, Abraham O. J Clin Med Article Autoimmune diseases (AIDs) are often co-associated, and about 25% of patients with one AID tend to develop other comorbid AIDs. Here, we employ the power of datamining to predict the comorbidity of AIDs based on their normalized co-citation in PubMed. First, we validate our technique in a test dataset using earlier-reported comorbidities of seven knowns AIDs. Notably, the prediction correlates well with comorbidity (R = 0.91) and validates our methodology. Then, we predict the association of 100 AIDs and classify them using principal component analysis. Our results are helpful in classifying AIDs into one of the following systems: (1) gastrointestinal, (2) neuronal, (3) eye, (4) cutaneous, (5) musculoskeletal, (6) kidneys and lungs, (7) cardiovascular, (8) hematopoietic, (9) endocrine, and (10) multiple. Our classification agrees with experimentally based taxonomy and ranks AID according to affected systems and gender. Some AIDs are unclassified and do not associate well with other AIDs. Interestingly, Alzheimer’s disease correlates well with other AIDs such as multiple sclerosis. Finally, our results generate a network classification of autoimmune diseases based on PubMed text mining and help map this medical universe. Our results are expected to assist healthcare workers in diagnosing comorbidity in patients with an autoimmune disease, and to help researchers in identifying common genetic, environmental, and autoimmune mechanisms. MDPI 2022-07-26 /pmc/articles/PMC9369164/ /pubmed/35893435 http://dx.doi.org/10.3390/jcm11154345 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Samuels, Hadas
Malov, Malki
Saha Detroja, Trishna
Ben Zaken, Karin
Bloch, Naamah
Gal-Tanamy, Meital
Avni, Orly
Polis, Baruh
Samson, Abraham O.
Autoimmune Disease Classification Based on PubMed Text Mining
title Autoimmune Disease Classification Based on PubMed Text Mining
title_full Autoimmune Disease Classification Based on PubMed Text Mining
title_fullStr Autoimmune Disease Classification Based on PubMed Text Mining
title_full_unstemmed Autoimmune Disease Classification Based on PubMed Text Mining
title_short Autoimmune Disease Classification Based on PubMed Text Mining
title_sort autoimmune disease classification based on pubmed text mining
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9369164/
https://www.ncbi.nlm.nih.gov/pubmed/35893435
http://dx.doi.org/10.3390/jcm11154345
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