Automated Identification of Diabetic Type 2 Subjects with and without Neuropathy Using Wavelet Transform on Pedobarograph

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作者
Rajendra Acharya U
Peck Ha Tan
Tavintharan Subramaniam
Toshiyo Tamura
Kuang Chua Chua
Seach Chyr Ernest Goh
Choo Min Lim
Shu Yi Diana Goh
Kang Rui Conrad Chung
Chelsea Law
机构
[1] Ngee Ann Polytechnic,Electronic and Computer Engineering Division
[2] Alexandra Hospital,Department of General Medicine, Diabetic Centre
[3] Chiba University,Department of Medical System Engineering
[4] Alexandra Hospital,Department of Rehabilitation, Diabetic Centre
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关键词
Plantar pressure; Diabetes Type 2; Neuropathy; Artificial neural network; Gaussian mixture model;
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摘要
Diabetes is a disorder of metabolism—the way our bodies use digested food for growth and energy. The most common form of diabetes is Type 2 diabetes. Abnormal plantar pressures are considered to play a major role in the pathologies of neuropathic ulcers in the diabetic foot. The purpose of this study was to examine the plantar pressure distribution in normal, diabetic Type 2 with and without neuropathy subjects. Foot scans were obtained using the F-scan (Tekscan USA) pressure measurement system. Various discrete wavelet coefficients were evaluated from the foot images. These extracted parameters were extracted using the discrete wavelet transform (DWT) and presented to the Gaussian mixture model (GMM) and a four-layer feed forward neural network for classification. We demonstrated a sensitivity of 100% and a specificity of more than 85% for the classifiers.
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页码:21 / 29
页数:8
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