Investigator

Y. Dai

Professor · ShanghaiTech University, School of Biomedical Engineering

About

YDY. Dai
Papers(1)
Advanced multicompart…
Collaborators(3)
Y. ZhouD. WuW. Hu
Institutions(3)
Biomedical Engineerin…Shanghai Jiao Tong Un…East China Normal Uni…

Papers

Advanced multicompartment diffusion model for noninvasive grading of endometrial cancer: comparative analysis with apparent diffusion coefficient (ADC) histogram parameters

To evaluate the predictive ability of restricted spectrum imaging (RSI) model-derived parameters for grading endometrial cancer (EC) and compare their performance with the histogram parameters of the mono-exponential model. A total of 63 patients with EC were enrolled. Regions of interest were manually delineated, and voxel-wise fitting was performed using both a mono-exponential model and 2-4-compartments RSI models. The optimal model was determined based on the Bayesian Information Criterion. Histogram parameters of the apparent diffusion coefficient (ADC) (mean, variance, 10/25/50/75/90th percentile, minimum, maximum, kurtosis, skewness) were extracted. One-way analysis of variance (ANOVA) or Kruskal-Wallis tests were employed to analyse differences in magnetic resonance imaging (MRI) parameters across histological grades. Receiver operating characteristic curve analysis was used to assess their diagnostic performance. The four-compartment RSI model was identified as the optimal model for characterising EC lesions. RSI4-F1/F3 exhibited significant differences between G1/G2 or G1+G2/G3 lesions, and their combination achieved the highest diagnostic performance (AUC = 0.872, 0.759), outperforming all ADC histogram parameters. Significant differences in RSI4-F1/F2/F3 were observed between G1/G3 lesions, with their combination yielding an AUC of 0.922, comparable to ADCmin (AUC = 0.918). Only RSI4-F1/F3 effectively differentiated between G2/G3 or lesions, with their combination yielding the highest AUC (0.729). Incorporating tumour size further enhanced diagnostic performance across all grades (AUC = 0.913, 0.946, 0.757, 0.791 for G1/G2, G1/G3, G2/G3, G1+G2/G3, respectively). The four-compartment RSI model provides valuable insights into the component weights of tumour microenvironment across EC grades. This approach enhances the noninvasive grading of EC lesions.

77Works
1Papers
3Collaborators

Positions

2023–

Professor

ShanghaiTech University · School of Biomedical Engineering

2016–

Director of Magnetic Resonance Imaging Collaboration

United Imaging Healthcare (China) · Central Research Institute

2014–

Senior Manager

Philips (China) · MR Clinical Science

2008–

MR Collaboration Manager

Siemens Healthineers

Education

2006

Ph.D.

Shanghai University · Department of Physics

2001

Bachelor

Shanghai University · Department of Physics

Country

CN

Keywords
Magnetic Resonance ImagingRadiologyTumor heterogeneityMicrostructural ImagingData Postprocessing