A comprehensive survey on the use of deep learning techniques in glioblastoma.

Journal: Artificial intelligence in medicine
PMID:

Abstract

Glioblastoma, characterized as a grade 4 astrocytoma, stands out as the most aggressive brain tumor, often leading to dire outcomes. The challenge of treating glioblastoma is exacerbated by the convergence of genetic mutations and disruptions in gene expression, driven by alterations in epigenetic mechanisms. The integration of artificial intelligence, inclusive of machine learning algorithms, has emerged as an indispensable asset in medical analyses. AI is becoming a necessary tool in medicine and beyond. Current research on Glioblastoma predominantly revolves around non-omics data modalities, prominently including magnetic resonance imaging, computed tomography, and positron emission tomography. Nonetheless, the assimilation of omic data-encompassing gene expression through transcriptomics and epigenomics-offers pivotal insights into patients' conditions. These insights, reciprocally, hold significant value in refining diagnoses, guiding decision- making processes, and devising efficacious treatment strategies. This survey's core objective encompasses a comprehensive exploration of noteworthy applications of machine learning methodologies in the domain of glioblastoma, alongside closely associated research pursuits. The study accentuates the deployment of artificial intelligence techniques for both non-omics and omics data, encompassing a range of tasks. Furthermore, the survey underscores the intricate challenges posed by the inherent heterogeneity of Glioblastoma, delving into strategies aimed at addressing its multifaceted nature.

Authors

  • Ichraq El Hachimy
    Moulay Ismail University of Meknes, Meknes, Morocco.
  • Douae Kabelma
    Al Akhawayn University in Ifrane, Ifrane, Morocco.
  • Chaimae Echcharef
    Al Akhawayn University in Ifrane, Ifrane, Morocco.
  • Mohamed Hassani
    Cancer Division, Faculty of medicine, Department of Biomolecular Medicine, Imperial College, London, United Kingdom.
  • Nabil Benamar
    Moulay Ismail University of Meknes, Meknes, Morocco; Al Akhawayn University in Ifrane, Ifrane, Morocco. Electronic address: n.benamar@umi.ac.ma.
  • Nabil Hajji
    Cancer Division, Faculty of medicine, Department of Biomolecular Medicine, Imperial College, London, United Kingdom; Department of Medical Biochemistry, Molecular Biology and Immunology, School of Medicine, Virgen Macarena University Hospital, University of Seville, Seville, Spain.