| Literature DB >> 33958734 |
Prateek Prasanna1, Vadim Spektor2, Gagandeep Singh3, Sunil Manjila4, Nicole Sakla5, Alan True5, Amr H Wardeh5, Niha Beig6, Anatoliy Vaysberg5, John Matthews5.
Abstract
The natural history and treatment landscape of primary brain tumours are complicated by the varied tumour behaviour of primary or secondary gliomas (high-grade transformation of low-grade lesions), as well as the dilemmas with identification of radiation necrosis, tumour progression, and pseudoprogression on MRI. Radiomics and radiogenomics promise to offer precise diagnosis, predict prognosis, and assess tumour response to modern chemotherapy/immunotherapy and radiation therapy. This is achieved by a triumvirate of morphological, textural, and functional signatures, derived from a high-throughput extraction of quantitative voxel-level MR image metrics. However, the lack of standardisation of acquisition parameters and inconsistent methodology between working groups have made validations unreliable, hence multi-centre studies involving heterogenous study populations are warranted. We elucidate novel radiomic and radiogenomic workflow concepts and state-of-the-art descriptors in sub-visual MR image processing, with relevant literature on applications of such machine learning techniques in glioma management.Entities:
Mesh:
Year: 2021 PMID: 33958734 PMCID: PMC8405677 DOI: 10.1038/s41416-021-01387-w
Source DB: PubMed Journal: Br J Cancer ISSN: 0007-0920 Impact factor: 7.640