Detail
Article
Online article
FT
Medvik - BMC
  • Something wrong with this record ?

Radiomics of pituitary adenoma using computer vision: a review

T. Zilka, W. Benesova

. 2024 ; 62 (12) : 3581-3597. [pub] 20240716

Language English Country United States

Document type Journal Article, Review, Systematic Review

E-resources Online Full text

NLK ProQuest Central from 1997-01-01 to 1 year ago
Medline Complete (EBSCOhost) from 2003-01-01 to 1 year ago
Nursing & Allied Health Database (ProQuest) from 1997-01-01 to 1 year ago
Health & Medicine (ProQuest) from 1997-01-01 to 1 year ago

Pituitary adenomas (PA) represent the most common type of sellar neoplasm. Extracting relevant information from radiological images is essential for decision support in addressing various objectives related to PA. Given the critical need for an accurate assessment of the natural progression of PA, computer vision (CV) and artificial intelligence (AI) play a pivotal role in automatically extracting features from radiological images. The field of "Radiomics" involves the extraction of high-dimensional features, often referred to as "Radiomic features," from digital radiological images. This survey offers an analysis of the current state of research in PA radiomics. Our work comprises a systematic review of 34 publications focused on PA radiomics and other automated information mining pertaining to PA through the analysis of radiological data using computer vision methods. We begin with a theoretical exploration essential for understanding the theoretical background of radionmics, encompassing traditional approaches from computer vision and machine learning, as well as the latest methodologies in deep radiomics utilizing deep learning (DL). Thirty-four research works under examination are comprehensively compared and evaluated. The overall results achieved in the analyzed papers are high, e.g., the best accuracy is up to 96% and the best achieved AUC is up to 0.99, which establishes optimism for the successful use of radiomic features. Methods based on deep learning seem to be the most promising for the future. In relation to this perspective DL methods, several challenges are remarkable: It is important to create high-quality and sufficiently extensive datasets necessary for training deep neural networks. Interpretability of deep radiomics is also a big open challenge. It is necessary to develop and verify methods that will explain to us how deep radiomic features reflect various physics-explainable aspects.

References provided by Crossref.org

000      
00000naa a2200000 a 4500
001      
bmc25003318
003      
CZ-PrNML
005      
20250206104243.0
007      
ta
008      
250121s2024 xxu f 000 0|eng||
009      
AR
024    7_
$a 10.1007/s11517-024-03163-3 $2 doi
035    __
$a (PubMed)39012416
040    __
$a ABA008 $b cze $d ABA008 $e AACR2
041    0_
$a eng
044    __
$a xxu
100    1_
$a Zilka, Tomas $u Saint Michal's Hospital, Bratislava, Slovakia $u Masaryk University, Brno, Czech Republic $1 https://orcid.org/0000000176487298
245    10
$a Radiomics of pituitary adenoma using computer vision: a review / $c T. Zilka, W. Benesova
520    9_
$a Pituitary adenomas (PA) represent the most common type of sellar neoplasm. Extracting relevant information from radiological images is essential for decision support in addressing various objectives related to PA. Given the critical need for an accurate assessment of the natural progression of PA, computer vision (CV) and artificial intelligence (AI) play a pivotal role in automatically extracting features from radiological images. The field of "Radiomics" involves the extraction of high-dimensional features, often referred to as "Radiomic features," from digital radiological images. This survey offers an analysis of the current state of research in PA radiomics. Our work comprises a systematic review of 34 publications focused on PA radiomics and other automated information mining pertaining to PA through the analysis of radiological data using computer vision methods. We begin with a theoretical exploration essential for understanding the theoretical background of radionmics, encompassing traditional approaches from computer vision and machine learning, as well as the latest methodologies in deep radiomics utilizing deep learning (DL). Thirty-four research works under examination are comprehensively compared and evaluated. The overall results achieved in the analyzed papers are high, e.g., the best accuracy is up to 96% and the best achieved AUC is up to 0.99, which establishes optimism for the successful use of radiomic features. Methods based on deep learning seem to be the most promising for the future. In relation to this perspective DL methods, several challenges are remarkable: It is important to create high-quality and sufficiently extensive datasets necessary for training deep neural networks. Interpretability of deep radiomics is also a big open challenge. It is necessary to develop and verify methods that will explain to us how deep radiomic features reflect various physics-explainable aspects.
650    _2
$a lidé $7 D006801
650    12
$a nádory hypofýzy $x diagnostické zobrazování $7 D010911
650    12
$a adenom $x diagnostické zobrazování $7 D000236
650    _2
$a umělá inteligence $7 D001185
650    _2
$a počítačové zpracování obrazu $x metody $7 D007091
650    _2
$a deep learning $7 D000077321
650    _2
$a strojové učení $7 D000069550
650    _2
$a radiomika $7 D000097188
655    _2
$a časopisecké články $7 D016428
655    _2
$a přehledy $7 D016454
655    _2
$a systematický přehled $7 D000078182
700    1_
$a Benesova, Wanda $u Slovak University of Technology in Bratislava, Bratislava, Slovakia. vanda_benesova@stuba.sk $1 https://orcid.org/0000000169299694
773    0_
$w MED00003217 $t Medical & biological engineering & computing $x 1741-0444 $g Roč. 62, č. 12 (2024), s. 3581-3597
856    41
$u https://pubmed.ncbi.nlm.nih.gov/39012416 $y Pubmed
910    __
$a ABA008 $b sig $c sign $y - $z 0
990    __
$a 20250121 $b ABA008
991    __
$a 20250206104239 $b ABA008
999    __
$a ok $b bmc $g 2263215 $s 1239325
BAS    __
$a 3
BAS    __
$a PreBMC-MEDLINE
BMC    __
$a 2024 $b 62 $c 12 $d 3581-3597 $e 20240716 $i 1741-0444 $m Medical & biological engineering & computing $n Med Biol Eng Comput $x MED00003217
LZP    __
$a Pubmed-20250121

Find record

Citation metrics

Loading data ...

Archiving options

Loading data ...