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Artificial Intelligence for Survival Prediction in Brain Tumors on Neuroimaging

Anne Jian, Sidong Liu, Antonio Di Ieva

2022Neurosurgery19 citationsDOI

Abstract

Survival prediction of patients affected by brain tumors provides essential information to guide surgical planning, adjuvant treatment selection, and patient counseling. Current reliance on clinical factors, such as Karnofsky Performance Status Scale, and simplistic radiological characteristics are, however, inadequate for survival prediction in tumors such as glioma that demonstrate molecular and clinical heterogeneity with variable survival outcomes. Advances in the domain of artificial intelligence have afforded powerful tools to capture a large number of hidden high-dimensional imaging features that reflect abundant information about tumor structure and physiology. Here, we provide an overview of current literature that apply computational analysis tools such as radiomics and machine learning methods to the pipeline of image preprocessing, tumor segmentation, feature extraction, and construction of classifiers to establish survival prediction models based on neuroimaging. We also discuss challenges relating to the development and evaluation of such models and explore ethical issues surrounding the future use of machine learning predictions.

Topics & Concepts

NeuroimagingMedicineArtificial intelligenceMachine learningFeature selectionBrain tumorPipeline (software)RadiomicsSegmentationDeep learningData scienceComputer scienceRadiologyPathologyPsychiatryProgramming languageRadiomics and Machine Learning in Medical ImagingGlioma Diagnosis and TreatmentMedical Imaging Techniques and Applications
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