dc.contributorTamez Peña, José Gerardo
dc.contributorSchool of Engineering and Sciences
dc.contributorTreviño Alvarado, Víctor Manuel
dc.contributorMartínez Ledesma, Juan Emmanuel
dc.contributorSantos Díaz, Alejandro
dc.contributorMartínez Torteya, Antonio
dc.contributorCampus Monterrey
dc.contributorpuemcuervo, emipsanchez
dc.creatorTAMEZ PEÑA, JOSE GERARDO; 67337
dc.creatorNezhadmoghadam, Fahimeh
dc.date.accessioned2023-05-22T16:30:45Z
dc.date.accessioned2023-07-19T20:24:31Z
dc.date.available2023-05-22T16:30:45Z
dc.date.available2023-07-19T20:24:31Z
dc.date.created2023-05-22T16:30:45Z
dc.date.issued2022-11-15
dc.identifierNezhadmoghadam, F. (2022). Robust unsupervised statistical learning for the identification and prediction of the risk profiles [Tesis Doctoral]. Instituto Tecnológico y de Estudios Superiores de Monterrey. Recuperado de: https://hdl.handle.net/11285/650703
dc.identifierhttps://hdl.handle.net/11285/650703
dc.identifierhttps://orcid.org/0000-0001-5200-1193
dc.identifier1005316
dc.identifier57212002531
dc.identifier.urihttps://repositorioslatinoamericanos.uchile.cl/handle/2250/7716578
dc.description.abstractThe discovery of disease subtypes substantially impacts the selection of patient-specific treatment with implications for long-term survival and disease-related outcomes. Given the heterogeneity of disease phenotypes and the demand for a clear understanding of the features associated with the onset of the disease, this discovery of clinically relevant disease subtypes is not straightforward. Consequently, it is essential for clinical researchers that techniques of disease subtyping be robust and reproducible in clinical settings. This dissertation aims to provide a simple clinical tool that predicts the specific disease subtype of a patient. Therefore a robust unsupervised statistical learning method is presented, developed, and validated that analyzes multidimensional datasets and returns reproducible, robust unsupervised clustering Models of the identified patient subtypes. Unsupervised clustering techniques could realistically model disease heterogeneity. Each cluster represents a distinct homogenous disease subtype discovered through the analysis of the predicted Class-Co-Association Matrix (PCCAM) created by randomly resampling research data. Primarily, there is a PCCAM resulting from the test results of replicated random-crossvalidation of unsupervised clustering that depicts the joint probability of subjects-pairs belonging to the same cluster; thus, PCCAM can result in the discovery of all the reproducible clusters present in the studied data. We applied the proposed methodology to various diseases to discover subtypes such as Alzheimer's disease, Covid-19, and acute myeloid leukemia cancer with different data types. Our findings showed the proposed unsupervised approach could discover the subtypes of disease with statistical differences. Also, the characterization of discovered subgroups indicated other substantial differences in some features we considered studying amongst subgroups.
dc.languageeng
dc.publisherInstituto Tecnológico y de Estudios Superiores de Monterrey
dc.relationpublishedVersion
dc.relationREPOSITORIO NACIONAL CONACYT
dc.rightshttp://creativecommons.org/licenses/by/4.0
dc.rightsopenAccess
dc.titleRobust unsupervised statistical learning for the identification and prediction of the risk profiles
dc.typeTesis Doctorado / doctoral Thesis


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