TY - JOUR
T1 - Toward Machine-Learning-Based Decision Support in Diabetes Care
T2 - A Risk Stratification Study on Diabetic Foot Ulcer and Amputation
AU - Schäfer, Zeinab
AU - Mathisen, Andreas
AU - Svendsen, Katrine
AU - Engberg, Susanne
AU - Rolighed Thomsen, Trine
AU - Kirketerp-Møller, Klaus
N1 - Copyright © 2021 Schäfer, Mathisen, Svendsen, Engberg, Rolighed Thomsen and Kirketerp-Møller.
PY - 2021
Y1 - 2021
N2 - Diabetes mellitus is associated with serious complications, with foot ulcers and amputation of limbs among the most debilitating consequences of late diagnosis and treatment of foot ulcers. Thus, prediction and on-time treatment of diabetic foot ulcers (DFU) are of great importance for improving and maintaining patients' quality of life and avoiding the consequent socio-economical burden of amputation. In this study, we use Danish national registry data to understand the risk factors of developing diabetic foot ulcers and amputation among patients with diabetes. We analyze the data of 246,705 patients with diabetes to assess some of the main risk factors for developing DFU/amputation. We study the socioeconomic information and past medical history of the patients. Factors, such as low family disposable income, cardiovascular disorders, peripheral artery, neuropathy, and chronic renal complications are among the important risk factors. Mental disorders and depression, albeit not as pronounced, still pose higher risks in comparison to the group of people without these complications. We further use machine learning techniques to assess the practical usefulness of such risk factors for predicting foot ulcers and amputation. Finally, we outline the limitations of working with registry data sources and explain potentials for combining additional public and private data sources in future applications of artificial intelligence (AI) to improve the prediction of diabetic foot ulcers and amputation.
AB - Diabetes mellitus is associated with serious complications, with foot ulcers and amputation of limbs among the most debilitating consequences of late diagnosis and treatment of foot ulcers. Thus, prediction and on-time treatment of diabetic foot ulcers (DFU) are of great importance for improving and maintaining patients' quality of life and avoiding the consequent socio-economical burden of amputation. In this study, we use Danish national registry data to understand the risk factors of developing diabetic foot ulcers and amputation among patients with diabetes. We analyze the data of 246,705 patients with diabetes to assess some of the main risk factors for developing DFU/amputation. We study the socioeconomic information and past medical history of the patients. Factors, such as low family disposable income, cardiovascular disorders, peripheral artery, neuropathy, and chronic renal complications are among the important risk factors. Mental disorders and depression, albeit not as pronounced, still pose higher risks in comparison to the group of people without these complications. We further use machine learning techniques to assess the practical usefulness of such risk factors for predicting foot ulcers and amputation. Finally, we outline the limitations of working with registry data sources and explain potentials for combining additional public and private data sources in future applications of artificial intelligence (AI) to improve the prediction of diabetic foot ulcers and amputation.
KW - amputation
KW - cohort analyses
KW - diabetic foot ulcer
KW - prediction models
KW - risk assessment
UR - http://www.scopus.com/inward/record.url?scp=85102125073&partnerID=8YFLogxK
U2 - 10.3389/fmed.2020.601602
DO - 10.3389/fmed.2020.601602
M3 - Journal article
C2 - 33681236
SN - 2296-858X
VL - 7
JO - Frontiers in Medicine
JF - Frontiers in Medicine
M1 - 601602
ER -