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An infrastructure for precision medicine through analysis of big data

Articolo
Data di Pubblicazione:
2018
Abstract:
Background: Nowadays, the increasing availability of omics data, due to both the advancements in the acquisition of molecular biology results and in systems biology simulation technologies, provides the bases for precision medicine. Success in precision medicine depends on the access to healthcare and biomedical data. To this end, the digitization of all clinical exams and medical records is becoming a standard in hospitals. The digitization is essential to collect, share, and aggregate large volumes of heterogeneous data to support the discovery of hidden patterns with the aim to define predictive models for biomedical purposes. Patients' data sharing is a critical process. In fact, it raises ethical, social, legal, and technological issues that must be properly addressed. Results: In this work, we present an infrastructure devised to deal with the integration of large volumes of heterogeneous biological data. The infrastructure was applied to the data collected between 2010-2016 in one of the major diagnostic analysis laboratories in Italy. Data from three different platforms were collected (i.e., laboratory exams, pathological anatomy exams, biopsy exams). The infrastructure has been designed to allow the extraction and aggregation of both unstructured and semi-structured data. Data are properly treated to ensure data security and privacy. Specialized algorithms have also been implemented to process the aggregated information with the aim to obtain a precise historical analysis of the clinical activities of one or more patients. Moreover, three Bayesian classifiers have been developed to analyze examinations reported as free text. Experimental results show that the classifiers exhibit a good accuracy when used to analyze sentences related to the sample location, diseases presence and status of the illnesses.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Big data; Machine learning; NoSQL; Clinical decision support systems; Medical record
Elenco autori:
Manconi, Andrea; Moscatelli, Marco; Milanesi, Luciano; Gnocchi, Matteo
Autori di Ateneo:
GNOCCHI MATTEO
MANCONI ANDREA
MOSCATELLI MARCO
Link alla scheda completa:
https://iris.cnr.it/handle/20.500.14243/355567
Pubblicato in:
BMC BIOINFORMATICS
Journal
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