Diabetic kidney disease is a common complication of diabetes and the main cause of end-stage renal disease. In this study, the investigator plan to enroll nearly 500 participant with/without DKD and to develop an automatic segmentation ultrasound based radiomics technology to differentiating participant with a non-invasive and an available way.
Ultrasound examination is a convenient, cheap and non-invasive method for kidney examination. However, the ability of conventional ultrasound to distinguish diabetic kidney disease from normal kidney is limited, and it is difficult to accurately distinguish between diabetic kidney disease and normal kidney only with the naked eye. In recent years, computer science has developed rapidly and artificial intelligence has been developing continuously. Much progress has been made in applying artificial intelligence in data analysis. Machine learning is a direction of generalized artificial intelligence, its main characteristic is to make the machine autonomous prediction and create algorithm, so as to achieve autonomous learning. kidney disease and deep learning are two different approaches in the field of machine learning. In this study, image omics and deep learning were used to analyze the images. Image omics extracts traditional image features, including shape, gray scale, texture, etc., and uses machine learning (pattern recognition) models to classify and predict, such as support vector machine, random forest, XGBoost, etc. Deep learning directly uses the convolutional network CNN to extract features, and completes classification and prediction in combination with the full connection layer, etc. This study aims to explore the detection of diabetic kidney disease and its pathological degree based on automatic segmentation ultraound-based radiomics technology, mining of internal information of ultrasound images, and form a set of non-invasive monitoring of diabetic kidney disease complications development system, especially in primary medical institutions, has a broad clinical application prospect.
Study Type
OBSERVATIONAL
Enrollment
499
Two-dimensional ultrasound images of the patient's kidneys were obtained by ultrasound imaging.
The People's Hospital of Yingshang
Fuyang, Anhui, China
Tianjin Third Central Hospital
Tianjin, Tianjin Municipality, China
Department of Ultrasound, Second Affiliated Hospital, School of Medicine, Zhejiang University
Hangzhou, Zhejiang, China
AUC
The area under curve (AUC) of radiomics model for differentiating DKD and T2DM or high level and low level DKD patients
Time frame: 6 months
Miou
The mean intersection over union (Miou) of DL-based auto-segmentation in different medical centers
Time frame: 6 months
mPA
The mean pixel accuracy (mPA) of DL-based auto-segmentation in different medical centers
Time frame: 6 months
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