2020
DOI: 10.1016/j.compbiomed.2020.103744
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Competitive neural layer-based method to identify people with high risk for diabetic foot

Abstract: Background and Objective: To automatically identify patients with diabetes mellitus (DM) who have high risk of developing diabetic foot, via an unsupervised machine learning technique. Methods: We collected a new database containing 54 known risk factors from 250 patients diagnosed with diabetes mellitus. The database also contained a separate validation cohort composed of 73 subjects, where the perceived risk was annotated by expert nurses. A competitive neuron layer-based method was used to automatically spl… Show more

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Cited by 20 publications
(38 citation statements)
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References 34 publications
(61 reference statements)
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“…Since 2020, several studies have been published that are pertinent for our review. The work by Ferreira et al aimed at using an unsupervised learning technique to automatically classify the risk of developing diabetic foot syndrome before any visual change can be perceived [ 22 ]. The developed method did not require clinical exams, physical contact with the patients or foot imaging.…”
Section: Artificial Intelligence In Diabetic Foot Syndrome: Methodolo...mentioning
confidence: 99%
“…Since 2020, several studies have been published that are pertinent for our review. The work by Ferreira et al aimed at using an unsupervised learning technique to automatically classify the risk of developing diabetic foot syndrome before any visual change can be perceived [ 22 ]. The developed method did not require clinical exams, physical contact with the patients or foot imaging.…”
Section: Artificial Intelligence In Diabetic Foot Syndrome: Methodolo...mentioning
confidence: 99%
“…Ferreira et al [ 40 ] uses an unsupervised learning methodology to classify the prognosis stage before visual signs. It works on the data collected by questionnaire asking questions about health conditions, foot care routine, numbness, loss of sensation, and tingling etc.…”
Section: Ai and Diabetic Wound Progonosismentioning
confidence: 99%
“…Быстрый рост количества людей с сахарным диабетом (СД) и прогрессирующее ухудшение здоровья на фоне данного заболевания обосновывают необходимость применения новых технологий для ранней диагностики диабетических микроангиопатий [9,10]. В настоящее время для обследования пациентов с СД разрабатываются ИНС, анализирующие результаты оптической когерентной и магнитно-резонансной томографии, ультразвукового исследования сосудов с целью выявления хронических микрососудистых осложнений [11,12].…”
Section: актуальностьunclassified