2019
DOI: 10.1007/978-3-030-12738-1_3
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Ethical Surveillance: Applying Deep Learning and Contextual Awareness for the Benefit of Persons Living with Dementia

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“…In the second case, knowledge can be acquired with tool-assisted methods or with qualitative methods, which are based on interviews or focus groups. With machine learning, health care data can be transformed into probabilistic models such as decision trees [43], Bayesian networks [69], Markov models [45,75,98], or rules [50], among others, that allow to capture a wide variety of knowledge concerning, for example, best care processes [43,69], the interpretation of mammography images [28], the prediction of sepsis [45], fall detection [99], risk situations for patients with dementia [101], or treatment inefficiencies due to patients' lack of adherence [95]. ML involves also unsupervised methods that can be used to create medical taxonomies about the topics observed in online medical digital libraries [17] to help information retrieval by consumers.…”
Section: Knowledge Generationmentioning
confidence: 99%
“…In the second case, knowledge can be acquired with tool-assisted methods or with qualitative methods, which are based on interviews or focus groups. With machine learning, health care data can be transformed into probabilistic models such as decision trees [43], Bayesian networks [69], Markov models [45,75,98], or rules [50], among others, that allow to capture a wide variety of knowledge concerning, for example, best care processes [43,69], the interpretation of mammography images [28], the prediction of sepsis [45], fall detection [99], risk situations for patients with dementia [101], or treatment inefficiencies due to patients' lack of adherence [95]. ML involves also unsupervised methods that can be used to create medical taxonomies about the topics observed in online medical digital libraries [17] to help information retrieval by consumers.…”
Section: Knowledge Generationmentioning
confidence: 99%