Frontiers in Oncology (Jul 2022)

Auto-Segmentation Ultrasound-Based Radiomics Technology to Stratify Patient With Diabetic Kidney Disease: A Multi-Center Retrospective Study

  • Jifan Chen,
  • Peile Jin,
  • Peile Jin,
  • Yue Song,
  • Yue Song,
  • Liting Feng,
  • Jiayue Lu,
  • Hongjian Chen,
  • Hongjian Chen,
  • Hongjian Chen,
  • Lei Xin,
  • Lei Xin,
  • Fuqiang Qiu,
  • Fuqiang Qiu,
  • Zhang Cong,
  • Zhang Cong,
  • Jiaxin Shen,
  • Jiaxin Shen,
  • Yanan Zhao,
  • Yanan Zhao,
  • Wen Xu,
  • Wen Xu,
  • Chenxi Cai,
  • Yan Zhou,
  • Jinfeng Yang,
  • Chao Zhang,
  • Chao Zhang,
  • Qin Chen,
  • Xiang Jing,
  • Pintong Huang,
  • Pintong Huang,
  • Pintong Huang

DOI
https://doi.org/10.3389/fonc.2022.876967
Journal volume & issue
Vol. 12

Abstract

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BackgroundAn increasing proportion of patients with diabetic kidney disease (DKD) has been observed among incident hemodialysis patients in large cities, which is consistent with the continuous growth of diabetes in the past 20 years.PurposeIn this multicenter retrospective study, we developed a deep learning (DL)-based automatic segmentation and radiomics technology to stratify patients with DKD and evaluate the possibility of clinical application across centers.Materials and MethodsThe research participants were enrolled retrospectively and separated into three parts: training, validation, and independent test datasets for further analysis. DeepLabV3+ network, PyRadiomics package, and least absolute shrinkage and selection operator were used for segmentation, extraction of radiomics variables, and regression, respectively.ResultsA total of 499 patients from three centers were enrolled in this study including 246 patients with type II diabetes mellitus (T2DM) and 253 patients with DKD. The mean intersection-over-union (Miou) and mean pixel accuracy (mPA) of automatic segmentation of the data from the three medical centers were 0.812 ± 0.003, 0.781 ± 0.009, 0.805 ± 0.020 and 0.890 ± 0.004, 0.870 ± 0.002, 0.893 ± 0.007, respectively. The variables from the renal parenchyma and sinus provided different information for the diagnosis and follow-up of DKD. The area under the curve (AUC) of the radiomics model for differentiating between DKD and T2DM patients was 0.674 ± 0.074 and for differentiating between the high and low stages of DKD was 0.803 ± 0.037.ConclusionIn this study, we developed a DL-based automatic segmentation, radiomics technology to stratify patients with DKD. The DL technology was proposed to achieve fast and accurate anatomical-level segmentation in the kidney, and an ultrasound-based radiomics model can achieve high diagnostic performance in the diagnosis and follow-up of patients with DKD.

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