AI Article Synopsis

  • Radiomics is a field that analyzes imaging data to extract high-dimensional features linked to biological events, particularly focusing on aggressive cancers like diffuse midline gliomas (DMG), which have a poor prognosis.
  • In a study involving 91 DMG patients, 12 with the H3.3K27M mutation were examined using MRI data to extract radiomic features, involving various statistical methods to assess their significance.
  • The analysis identified 13 significant radiomic features for predicting progression-free and overall survival, highlighting that certain texture profiles and features could assist in non-invasive diagnosis and assessment of DMG.

Article Abstract

Background: Radiomics refers to a recent area of knowledge that studies features extracted from different imaging techniques and subsequently transformed into high-dimensional data that can be associated with biological events. Diffuse midline gliomas (DMG) are one of the most devastating types of cancer, with a median survival of approximately 11 months after diagnosis and 4-5 months after radiological and clinical progression.

Methods: A retrospective study. From a database of 91 patients with DMG, only 12 had the H3.3K27M mutation and brain MRI DICOM files available. Radiomic features were extracted from MRI T1 and T2 sequences using LIFEx software. Statistical analysis included normal distribution tests and the Mann-Whitney U test, ROC analysis, and calculation of cut-off values.

Results: A total of 5760 radiomic values were included in the analyses. AUROC demonstrated 13 radiomics with statistical significance for progression-free survival (PFS) and overall survival (OS). Diagnostic performance tests showed nine radiomics with specificity for PFS above 90% and one with a sensitivity of 97.2%. For OS, 3 out of 4 radiomics demonstrated between 80 and 90% sensitivity.

Conclusions: Several radiomic features demonstrated statistical significance and have the potential to further aid DMG diagnostic assessment non-invasively. The most significant radiomics were first- and second-order features with GLCM texture profile, GLZLM_GLNU, and NGLDM_Contrast.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10001394PMC
http://dx.doi.org/10.3390/diagnostics13050849DOI Listing

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