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

Automatic caries detection in bitewing radiographs-Part II: experimental comparison

A. Tichý, L. Kunt, V. Nagyová, J. Kybic

. 2024 ; 28 (2) : 133. [pub] 20240205

Language English Country Germany

Document type Journal Article

Grant support
GIP-21-SL-01-232 Všeobecná Fakultní Nemocnice v Pranewize
CZ.02.1.01/0.0/0.0/16 019/0000765 Ministerstvo Školství, Mládeže a Tělovýchovy

E-resources Online Full text

NLK ProQuest Central from 1997-03-01 to 1 year ago
Health & Medicine (ProQuest) from 1997-03-01 to 1 year ago
Public Health Database (ProQuest) from 1997-03-01 to 1 year ago

OBJECTIVE: The objective of this study was to compare the detection of caries in bitewing radiographs by multiple dentists with an automatic method and to evaluate the detection performance in the absence of a reliable ground truth. MATERIALS AND METHODS: Four experts and three novices marked caries using bounding boxes in 100 bitewing radiographs. The same dataset was processed by an automatic object detection deep learning method. All annotators were compared in terms of the number of errors and intersection over union (IoU) using pairwise comparisons, with respect to the consensus standard, and with respect to the annotator of the training dataset of the automatic method. RESULTS: The number of lesions marked by experts in 100 images varied between 241 and 425. Pairwise comparisons showed that the automatic method outperformed all dentists except the original annotator in the mean number of errors, while being among the best in terms of IoU. With respect to a consensus standard, the performance of the automatic method was best in terms of the number of errors and slightly below average in terms of IoU. Compared with the original annotator, the automatic method had the highest IoU and only one expert made fewer errors. CONCLUSIONS: The automatic method consistently outperformed novices and performed as well as highly experienced dentists. CLINICAL SIGNIFICANCE: The consensus in caries detection between experts is low. An automatic method based on deep learning can improve both the accuracy and repeatability of caries detection, providing a useful second opinion even for very experienced dentists.

References provided by Crossref.org

000      
00000naa a2200000 a 4500
001      
bmc24007201
003      
CZ-PrNML
005      
20240423155803.0
007      
ta
008      
240412s2024 gw f 000 0|eng||
009      
AR
024    7_
$a 10.1007/s00784-024-05528-2 $2 doi
035    __
$a (PubMed)38315246
040    __
$a ABA008 $b cze $d ABA008 $e AACR2
041    0_
$a eng
044    __
$a gw
100    1_
$a Tichý, Antonín $u Institute of Dental Medicine, First Faculty of Medicine of the Charles University and General University Hospital in Prague, Prague, Czech Republic
245    10
$a Automatic caries detection in bitewing radiographs-Part II: experimental comparison / $c A. Tichý, L. Kunt, V. Nagyová, J. Kybic
520    9_
$a OBJECTIVE: The objective of this study was to compare the detection of caries in bitewing radiographs by multiple dentists with an automatic method and to evaluate the detection performance in the absence of a reliable ground truth. MATERIALS AND METHODS: Four experts and three novices marked caries using bounding boxes in 100 bitewing radiographs. The same dataset was processed by an automatic object detection deep learning method. All annotators were compared in terms of the number of errors and intersection over union (IoU) using pairwise comparisons, with respect to the consensus standard, and with respect to the annotator of the training dataset of the automatic method. RESULTS: The number of lesions marked by experts in 100 images varied between 241 and 425. Pairwise comparisons showed that the automatic method outperformed all dentists except the original annotator in the mean number of errors, while being among the best in terms of IoU. With respect to a consensus standard, the performance of the automatic method was best in terms of the number of errors and slightly below average in terms of IoU. Compared with the original annotator, the automatic method had the highest IoU and only one expert made fewer errors. CONCLUSIONS: The automatic method consistently outperformed novices and performed as well as highly experienced dentists. CLINICAL SIGNIFICANCE: The consensus in caries detection between experts is low. An automatic method based on deep learning can improve both the accuracy and repeatability of caries detection, providing a useful second opinion even for very experienced dentists.
650    _2
$a lidé $7 D006801
650    _2
$a interproximální technika $7 D016300
650    12
$a náchylnost k zubnímu kazu $7 D003733
650    12
$a zubní kaz $x diagnostické zobrazování $7 D003731
655    _2
$a časopisecké články $7 D016428
700    1_
$a Kunt, Lukáš $u Faculty of Electrical Engineering, Czech Technical University in Prague, Prague, Czech Republic
700    1_
$a Nagyová, Valéria $u Institute of Dental Medicine, First Faculty of Medicine of the Charles University and General University Hospital in Prague, Prague, Czech Republic
700    1_
$a Kybic, Jan $u Faculty of Electrical Engineering, Czech Technical University in Prague, Prague, Czech Republic. kybic@fel.cvut.cz
773    0_
$w MED00005714 $t Clinical oral investigations $x 1436-3771 $g Roč. 28, č. 2 (2024), s. 133
856    41
$u https://pubmed.ncbi.nlm.nih.gov/38315246 $y Pubmed
910    __
$a ABA008 $b sig $c sign $y - $z 0
990    __
$a 20240412 $b ABA008
991    __
$a 20240423155800 $b ABA008
999    __
$a ok $b bmc $g 2081282 $s 1216968
BAS    __
$a 3
BAS    __
$a PreBMC-MEDLINE
BMC    __
$a 2024 $b 28 $c 2 $d 133 $e 20240205 $i 1436-3771 $m Clinical oral investigations $n Clin Oral Investig $x MED00005714
GRA    __
$a GIP-21-SL-01-232 $p Všeobecná Fakultní Nemocnice v Pranewize
GRA    __
$a CZ.02.1.01/0.0/0.0/16 019/0000765 $p Ministerstvo Školství, Mládeže a Tělovýchovy
LZP    __
$a Pubmed-20240412

Find record

Citation metrics

Loading data ...

Archiving options

Loading data ...