Diagnostics (Nov 2022)

Predicting Progression of Kidney Injury Based on Elastography Ultrasound and Radiomics Signatures

  • Minyan Zhu,
  • Lumin Tang,
  • Wenqi Yang,
  • Yao Xu,
  • Xiajing Che,
  • Yin Zhou,
  • Xinghua Shao,
  • Wenyan Zhou,
  • Minfang Zhang,
  • Guanghan Li,
  • Min Zheng,
  • Qin Wang,
  • Hongli Li,
  • Shan Mou

DOI
https://doi.org/10.3390/diagnostics12112678
Journal volume & issue
Vol. 12, no. 11
p. 2678

Abstract

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Background: Shear wave elastography ultrasound (SWE) is an emerging non-invasive candidate for assessing kidney stiffness. However, its prognostic value regarding kidney injury is unclear. Methods: A prospective cohort was created from kidney biopsy patients in our hospital from May 2019 to June 2020. The primary outcome was the initiation of renal replacement therapy or death, while the secondary outcome was eGFR 2. Ultrasound, biochemical, and biopsy examinations were performed on the same day. Radiomics signatures were extracted from the SWE images. Results: In total, 187 patients were included and followed up for 24.57 ± 5.52 months. The median SWE value of the left kidney cortex (L_C_median) is an independent risk factor for kidney prognosis for stage 3 or over (HR 0.890 (0.796–0.994), p p < 0.001). The traditional Cox regression model had a c-index of 0.9051 (0.8460–0.9196), which was no worse than the machine learning models, Support Vector Machine (SVM), SurvivalTree, Random survival forest (RSF), Coxboost, and Deepsurv. Conclusions: SWE can predict kidney injury progression with an improved performance by radiomics and Cox regression modeling.

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