Evaluating artificial intelligence for comparative radiography

被引:4
|
作者
Gomez, Oscar [1 ]
Mesejo, Pablo [1 ,2 ,3 ]
Ibanez, Oscar [1 ,3 ,4 ]
Valsecchi, Andrea [1 ,3 ]
Bermejo, Enrique [1 ,2 ,3 ]
Cerezo, Andrea [5 ]
Perez, Jose [5 ]
Aleman, Inmaculada [5 ]
Kahana, Tzipi [6 ]
Damas, Sergio [1 ,7 ]
Cordon, Oscar [1 ,2 ]
机构
[1] Univ Granada, Andalusian Res Inst DaSCI, Granada, Spain
[2] Univ Granada, Dept Comp Sci & Artificial Intelligence, Granada, Spain
[3] Panacea Cooperat Res S Coop, Ponferrada, Spain
[4] Univ A Coruna, CITIC, Fac Comp Sci, La Coruna, Spain
[5] Univ Granada, Dept Legal Med Toxicol & Phys Anthropol, Granada, Spain
[6] Hebrew Univ Jerusalem, Fac Criminol, Jerusalem, Israel
[7] Univ Granada, Dept Software Engn, Granada, Spain
关键词
Skeleton-based forensic human identification; Comparative radiography; Artificial intelligence; Computer-aided decision support systems; Image segmentation; Image registration; Deep learning; MEDICAL IMAGE REGISTRATION; FRONTAL-SINUS; 3-DIMENSIONAL RECONSTRUCTION; SKELETAL IDENTIFICATION; CHEST RADIOGRAPHS; SEGMENTATION; OPTIMIZATION; RELIABILITY; RADIOLOGY; OUTLINES;
D O I
10.1007/s00414-023-03080-4
中图分类号
DF [法律]; D9 [法律]; R [医药、卫生];
学科分类号
0301 ; 10 ;
摘要
IntroductionComparative radiography is a forensic identification and shortlisting technique based on the comparison of skeletal structures in ante-mortem and post-mortem images. The images (e.g., 2D radiographs or 3D computed tomographies) are manually superimposed and visually compared by a forensic practitioner. It requires a significant amount of time per comparison, limiting its utility in large comparison scenarios.MethodsWe propose and validate a novel framework for automating the shortlisting of candidates using artificial intelligence. It is composed of (1) a segmentation method to delimit skeletal structures' silhouettes in radiographs, (2) a superposition method to generate the best simulated "radiographs" from 3D images according to the segmented radiographs, and (3) a decision-making method for shortlisting all candidates ranked according to a similarity metric.MaterialThe dataset is composed of 180 computed tomographies and 180 radiographs where the frontal sinuses are visible. Frontal sinuses are the skeletal structure analyzed due to their high individualization capability.ResultsFirstly, we validate two deep learning-based techniques for segmenting the frontal sinuses in radiographs, obtaining high-quality results. Secondly, we study the framework's shortlisting capability using both automatic segmentations and superimpositions. The obtained superimpositions, based only on the superimposition metric, allowed us to filter out 40% of the possible candidates in a completely automatic manner. Thirdly, we perform a reliability study by comparing 180 radiographs against 180 computed tomographies using manual segmentations. The results allowed us to filter out 73% of the possible candidates. Furthermore, the results are robust to inter- and intra-expert-related errors.
引用
收藏
页码:307 / 327
页数:21
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