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Abstract Details

Beyond the Naked Eye: A Systematic Review on the Current State of Radiomics Approaches to the Vestibular Schwannoma
Neuro-oncology
P2 - Poster Session 2 (11:45 AM-12:45 PM)
6-010

This systematic review evaluates and summarizes the potential for radiomics, a computational tool that extracts quantitative features from imaging, to predict VS clinical outcomes and assess treatment responsiveness.

Vestibular schwannomas(VS) present a clinical challenge in management decision-making due to their unpredictable growth and potential impact on crucial neurological function. Radiomics involves extracting quantitative, reproducible data from medical images beyond what the human perception and can be used to predict outcomes such as patient survival, tumor growth, response to treatment, and hearing loss, to ultimately inform management.

Studies were extracted by searching PubMed, OVID Medline, and Web of Science databases. Included studies analyzed radiomic features from magnetic resonance imaging(MRI) as independent variables and varied in their methodology to predict clinical outcomes. Studies analyzed associations between radiomic features, pre-procedural clinical features, and post-procedural clinical and radiologic outcomes.

Thirteen retrospective studies met inclusion criteria; eleven of these used machine learning(ML) models to analyze radiomic MRI features. One non-ML study correlated longitudinal tumor volumetric changes with texture features. All segmentation workflows utilized manual or semi-automated approaches to determine the lesion’s region of interest. Models based on pre-procedural imaging demonstrated moderate predictive accuracy by Area Under the Receiver Operating Characteristic curve(AUC=0.66-0.7), while post-procedural models showed strong predictive capacity(AUC=0.75-1.0). One study employed a convolutional neural network evaluating post-operative facial nerve outcomes(AUC=0.89) that outperformed traditional ML models(AUC=0.64-0.85).

Radiomics-based predictive modeling in VS shows promise across a range of clinical outcomes. However, small sample sizes, retrospective designs, and lack of standardization in imaging and modeling hinder its widespread applicability. Addressing these limitations through larger, standardized datasets, consistent modeling approaches, and prospective predictive studies, potentially incorporating deep learning, will be essential to improve generalizability and support clinical integration.

Authors/Disclosures
Rithvik Gundlapalli
PRESENTER
Mr. Gundlapalli has nothing to disclose.
Purushotham Ramanathan, MD Dr. Ramanathan has nothing to disclose.
Veda Akula Miss Akula has nothing to disclose.
Douglas Fox, Medical Student Mr. Fox has nothing to disclose.
Sara Nguyen Ms. Nguyen has nothing to disclose.
Derek Meyers Mr. Meyers has nothing to disclose.
Xin Y. He, BS Mr. He has nothing to disclose.
Mariam Ishaque, MD, PhD Dr. Ishaque has nothing to disclose.
Ryan T. Kellogg, MD Dr. Kellogg has received personal compensation in the range of $10,000-$49,999 for serving as a Consultant for Johnson and Johnson. Dr. Kellogg has stock in Vix.ai. The institution of Dr. Kellogg has received research support from Siemens.
Benjamin Lovin, MD Dr. Lovin has nothing to disclose.
jason p. sheehan, MD Dr. sheehan has nothing to disclose.
Adam Thompson-Harvey (University of Virginia Medical Center) No disclosure on file
Georgios Maragkos, MD Dr. Maragkos has nothing to disclose.
Ashok R. Asthagiri, MD Dr. Asthagiri has nothing to disclose.