Scientific Reports (Jan 2024)

Added value of dynamic contrast-enhanced MR imaging in deep learning-based prediction of local recurrence in grade 4 adult-type diffuse gliomas patients

  • Jungbin Yoon,
  • Nayeon Baek,
  • Roh-Eul Yoo,
  • Seung Hong Choi,
  • Tae Min Kim,
  • Chul-Kee Park,
  • Sung-Hye Park,
  • Jae-Kyung Won,
  • Joo Ho Lee,
  • Soon Tae Lee,
  • Kyu Sung Choi,
  • Ji Ye Lee,
  • Inpyeong Hwang,
  • Koung Mi Kang,
  • Tae Jin Yun

DOI
https://doi.org/10.1038/s41598-024-52841-7
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 9

Abstract

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Abstract Local recurrences in patients with grade 4 adult-type diffuse gliomas mostly occur within residual non-enhancing T2 hyperintensity areas after surgical resection. Unfortunately, it is challenging to distinguish non-enhancing tumors from edema in the non-enhancing T2 hyperintensity areas using conventional MRI alone. Quantitative DCE MRI parameters such as Ktrans and Ve convey permeability information of glioblastomas that cannot be provided by conventional MRI. We used the publicly available nnU-Net to train a deep learning model that incorporated both conventional and DCE MRI to detect the subtle difference in vessel leakiness due to neoangiogenesis between the non-recurrence area and the local recurrence area, which contains a higher proportion of high-grade glioma cells. We found that the addition of Ve doubled the sensitivity while nonsignificantly decreasing the specificity for prediction of local recurrence in glioblastomas, which implies that the combined model may result in fewer missed cases of local recurrence. The deep learning model predictive of local recurrence may enable risk-adapted radiotherapy planning in patients with grade 4 adult-type diffuse gliomas.