Back to Search Start Over

Automatic personal identification using a single CT image.

Authors :
Heinrich, Andreas
Source :
European Radiology. Aug2024, p1-12.
Publication Year :
2024

Abstract

Objectives: Computer vision (CV) mimics human vision, enabling computers to automatically compare radiological images from recent examinations with a large image database for unique identification, crucial in emergency scenarios involving unknown patients or deceased individuals. This study aims to extend a CV-based personal identification method from orthopantomograms (OPGs) to computed tomography (CT) examinations using single CT slices.The study analyzed 819 cranial computed tomography (CCT) examinations from 722 individuals, focusing on single CT slices from six anatomical regions to explore their potential for CV-based personal identification in 69 procedures. CV automatically identifies and describes interesting features in images, which can be recognized in a reference image and then designated as matching points. In this study, the number of matching points was used as an indicator for identification.Across six different regions, identification rates ranged from 41/69 (59%) to 69/69 (100%) across over 700 possible identities. Comparison of images from the same individual achieved higher matching points, averaging 6.32 ± 0.52% (100% represents the maximum possible matching points), while images of different individuals averaged 0.94 ± 0.15%. Reliable matching points are found in the teeth, maxilla, cervical spine, skull bones, and paranasal sinuses, with the maxillary sinuses and ethmoidal cells being particularly suitable for identification due to their abundant matching points.Unambiguous identification of individuals based on a single CT slice is achievable, with maxillary sinus CT slices showing the highest identification rates. However, metal artifacts, especially from dental prosthetics, and various head positions can hinder identification.Radiology possesses a multitude of reference images for a CV database, facilitating automated CV-based personal identification in emergency examinations or cases involving unknown deceased individuals. This enhances patient care and communication with relatives by granting access to medical history.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.Methods: Computer vision (CV) mimics human vision, enabling computers to automatically compare radiological images from recent examinations with a large image database for unique identification, crucial in emergency scenarios involving unknown patients or deceased individuals. This study aims to extend a CV-based personal identification method from orthopantomograms (OPGs) to computed tomography (CT) examinations using single CT slices.The study analyzed 819 cranial computed tomography (CCT) examinations from 722 individuals, focusing on single CT slices from six anatomical regions to explore their potential for CV-based personal identification in 69 procedures. CV automatically identifies and describes interesting features in images, which can be recognized in a reference image and then designated as matching points. In this study, the number of matching points was used as an indicator for identification.Across six different regions, identification rates ranged from 41/69 (59%) to 69/69 (100%) across over 700 possible identities. Comparison of images from the same individual achieved higher matching points, averaging 6.32 ± 0.52% (100% represents the maximum possible matching points), while images of different individuals averaged 0.94 ± 0.15%. Reliable matching points are found in the teeth, maxilla, cervical spine, skull bones, and paranasal sinuses, with the maxillary sinuses and ethmoidal cells being particularly suitable for identification due to their abundant matching points.Unambiguous identification of individuals based on a single CT slice is achievable, with maxillary sinus CT slices showing the highest identification rates. However, metal artifacts, especially from dental prosthetics, and various head positions can hinder identification.Radiology possesses a multitude of reference images for a CV database, facilitating automated CV-based personal identification in emergency examinations or cases involving unknown deceased individuals. This enhances patient care and communication with relatives by granting access to medical history.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.Results: Computer vision (CV) mimics human vision, enabling computers to automatically compare radiological images from recent examinations with a large image database for unique identification, crucial in emergency scenarios involving unknown patients or deceased individuals. This study aims to extend a CV-based personal identification method from orthopantomograms (OPGs) to computed tomography (CT) examinations using single CT slices.The study analyzed 819 cranial computed tomography (CCT) examinations from 722 individuals, focusing on single CT slices from six anatomical regions to explore their potential for CV-based personal identification in 69 procedures. CV automatically identifies and describes interesting features in images, which can be recognized in a reference image and then designated as matching points. In this study, the number of matching points was used as an indicator for identification.Across six different regions, identification rates ranged from 41/69 (59%) to 69/69 (100%) across over 700 possible identities. Comparison of images from the same individual achieved higher matching points, averaging 6.32 ± 0.52% (100% represents the maximum possible matching points), while images of different individuals averaged 0.94 ± 0.15%. Reliable matching points are found in the teeth, maxilla, cervical spine, skull bones, and paranasal sinuses, with the maxillary sinuses and ethmoidal cells being particularly suitable for identification due to their abundant matching points.Unambiguous identification of individuals based on a single CT slice is achievable, with maxillary sinus CT slices showing the highest identification rates. However, metal artifacts, especially from dental prosthetics, and various head positions can hinder identification.Radiology possesses a multitude of reference images for a CV database, facilitating automated CV-based personal identification in emergency examinations or cases involving unknown deceased individuals. This enhances patient care and communication with relatives by granting access to medical history.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.Conclusion: Computer vision (CV) mimics human vision, enabling computers to automatically compare radiological images from recent examinations with a large image database for unique identification, crucial in emergency scenarios involving unknown patients or deceased individuals. This study aims to extend a CV-based personal identification method from orthopantomograms (OPGs) to computed tomography (CT) examinations using single CT slices.The study analyzed 819 cranial computed tomography (CCT) examinations from 722 individuals, focusing on single CT slices from six anatomical regions to explore their potential for CV-based personal identification in 69 procedures. CV automatically identifies and describes interesting features in images, which can be recognized in a reference image and then designated as matching points. In this study, the number of matching points was used as an indicator for identification.Across six different regions, identification rates ranged from 41/69 (59%) to 69/69 (100%) across over 700 possible identities. Comparison of images from the same individual achieved higher matching points, averaging 6.32 ± 0.52% (100% represents the maximum possible matching points), while images of different individuals averaged 0.94 ± 0.15%. Reliable matching points are found in the teeth, maxilla, cervical spine, skull bones, and paranasal sinuses, with the maxillary sinuses and ethmoidal cells being particularly suitable for identification due to their abundant matching points.Unambiguous identification of individuals based on a single CT slice is achievable, with maxillary sinus CT slices showing the highest identification rates. However, metal artifacts, especially from dental prosthetics, and various head positions can hinder identification.Radiology possesses a multitude of reference images for a CV database, facilitating automated CV-based personal identification in emergency examinations or cases involving unknown deceased individuals. This enhances patient care and communication with relatives by granting access to medical history.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.Clinical relevance statement: Computer vision (CV) mimics human vision, enabling computers to automatically compare radiological images from recent examinations with a large image database for unique identification, crucial in emergency scenarios involving unknown patients or deceased individuals. This study aims to extend a CV-based personal identification method from orthopantomograms (OPGs) to computed tomography (CT) examinations using single CT slices.The study analyzed 819 cranial computed tomography (CCT) examinations from 722 individuals, focusing on single CT slices from six anatomical regions to explore their potential for CV-based personal identification in 69 procedures. CV automatically identifies and describes interesting features in images, which can be recognized in a reference image and then designated as matching points. In this study, the number of matching points was used as an indicator for identification.Across six different regions, identification rates ranged from 41/69 (59%) to 69/69 (100%) across over 700 possible identities. Comparison of images from the same individual achieved higher matching points, averaging 6.32 ± 0.52% (100% represents the maximum possible matching points), while images of different individuals averaged 0.94 ± 0.15%. Reliable matching points are found in the teeth, maxilla, cervical spine, skull bones, and paranasal sinuses, with the maxillary sinuses and ethmoidal cells being particularly suitable for identification due to their abundant matching points.Unambiguous identification of individuals based on a single CT slice is achievable, with maxillary sinus CT slices showing the highest identification rates. However, metal artifacts, especially from dental prosthetics, and various head positions can hinder identification.Radiology possesses a multitude of reference images for a CV database, facilitating automated CV-based personal identification in emergency examinations or cases involving unknown deceased individuals. This enhances patient care and communication with relatives by granting access to medical history.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.Key Points: Computer vision (CV) mimics human vision, enabling computers to automatically compare radiological images from recent examinations with a large image database for unique identification, crucial in emergency scenarios involving unknown patients or deceased individuals. This study aims to extend a CV-based personal identification method from orthopantomograms (OPGs) to computed tomography (CT) examinations using single CT slices.The study analyzed 819 cranial computed tomography (CCT) examinations from 722 individuals, focusing on single CT slices from six anatomical regions to explore their potential for CV-based personal identification in 69 procedures. CV automatically identifies and describes interesting features in images, which can be recognized in a reference image and then designated as matching points. In this study, the number of matching points was used as an indicator for identification.Across six different regions, identification rates ranged from 41/69 (59%) to 69/69 (100%) across over 700 possible identities. Comparison of images from the same individual achieved higher matching points, averaging 6.32 ± 0.52% (100% represents the maximum possible matching points), while images of different individuals averaged 0.94 ± 0.15%. Reliable matching points are found in the teeth, maxilla, cervical spine, skull bones, and paranasal sinuses, with the maxillary sinuses and ethmoidal cells being particularly suitable for identification due to their abundant matching points.Unambiguous identification of individuals based on a single CT slice is achievable, with maxillary sinus CT slices showing the highest identification rates. However, metal artifacts, especially from dental prosthetics, and various head positions can hinder identification.Radiology possesses a multitude of reference images for a CV database, facilitating automated CV-based personal identification in emergency examinations or cases involving unknown deceased individuals. This enhances patient care and communication with relatives by granting access to medical history.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>.<italic>Unknown individuals in radiology or forensics pose challenges, addressed through automatic CV-based identification methods</italic>.<italic>A single CT slice highlighting the maxillary sinuses is particularly effective for personal identification</italic>.<italic>Radiology plays a pivotal role in automated personal identification by leveraging its extensive image database</italic>. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09387994
Database :
Academic Search Index
Journal :
European Radiology
Publication Type :
Academic Journal
Accession number :
179156106
Full Text :
https://doi.org/10.1007/s00330-024-11013-x