2021
DOI: 10.3390/healthcare9070827
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Sharing Biomedical Data: Strengthening AI Development in Healthcare

Abstract: Artificial intelligence (AI)-based solutions have revolutionized our world, using extensive datasets and computational resources to create automatic tools for complex tasks that, until now, have been performed by humans. Massive data is a fundamental aspect of the most powerful AI-based algorithms. However, for AI-based healthcare solutions, there are several socioeconomic, technical/infrastructural, and most importantly, legal restrictions, which limit the large collection and access of biomedical data, espec… Show more

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Cited by 22 publications
(17 citation statements)
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“…Model representing patient and data relationship for improving models, while balancing impact on patient security [17] With a continuation of these trends as found in this research, AI systems that make improvements to data standardization, would increase the accuracy of diagnoses drastically enough to make ML an extremely valuable tool in healthcare. Within Yoo's study, the application of AI was limited because the specific cohort of participants for the study included a really small number of lung cancer positive patients, and the actual clinical prevalence of positive encounters for national lung screening trials would be extremely rare.…”
Section: Figure IIImentioning
confidence: 69%
See 1 more Smart Citation
“…Model representing patient and data relationship for improving models, while balancing impact on patient security [17] With a continuation of these trends as found in this research, AI systems that make improvements to data standardization, would increase the accuracy of diagnoses drastically enough to make ML an extremely valuable tool in healthcare. Within Yoo's study, the application of AI was limited because the specific cohort of participants for the study included a really small number of lung cancer positive patients, and the actual clinical prevalence of positive encounters for national lung screening trials would be extremely rare.…”
Section: Figure IIImentioning
confidence: 69%
“…Throughout many studies in the application of AI against human and algorithmic performance, a large risk that remains present in these studies would be that the models have limited to no clinical context, including the patient's medical history or prior laboratory findings, which can be critical in finding the proper treatment plans [18]. When it comes to the processing of data, there are a lot of times in which the systems connecting and supplying each other information automatically, are distributed through multiple heterogeneous and semantically incompatible systems, which leads to interoperability problems and inconsistencies [17]. When subsystems of a medical center are inconsistent with each other, and the data transferred between systems gets processed at each stage, there is increased potential for data loss and context misinterpretation.…”
Section: Data Pre-processingmentioning
confidence: 99%
“…Lack of large datasets remains a problem for healthcare solutions since models cannot learn how to deal with complex data due to insufficient training samples [ 205 , 206 ]. The difficult access to the medical data has slowed the progress of CAD development.…”
Section: Discussionmentioning
confidence: 99%
“…The use of synthetic data has also been applied in the biomedical field, where augmented data has been developed to increase the number and variability of examples [55]. Furthermore, different studies with a similar goal as this paper's have also focused on generating synthetic data to incorporate it to the training set and avoid class imbalance problems [56][57][58].…”
Section: Generation Of Synthetic Datamentioning
confidence: 99%