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Artificial intelligence in forensic medicine and related sciences – selected issues = Sztuczna inteligencja w medycynie sądowej i naukach pokrewnych – wybrane zagadnienia

Data publikacji: 04.06.2024

Archiwum Medycyny Sądowej i Kryminologii, 2024, Vol. 74 (1), s. 64 - 76

https://doi.org/10.4467/16891716AMSIK.24.005.19650

Autorzy

,
Michał Szeremeta
Zakład Medycyny Sądowej, Uniwersytet Medyczny w Białymstoku
https://orcid.org/0000-0001-5845-0053 Orcid
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,
Julia Janica
Studenckie Koło Naukowe przy Zakładzie Medycyny Sądowej Uniwersytet Medyczny w Białymstoku
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Anna Niemcunowicz-Janica
Zakład Medycyny Sądowej, Uniwersytet Medyczny w Białymstoku
https://orcid.org/0000-0003-2807-8312 Orcid
Wszystkie publikacje autora →

Tytuły

Artificial intelligence in forensic medicine and related sciences - selected issues

Abstrakt

Aim. The aim of the work is to provide an overview of the potential application of artificial intelligence in forensic medicine and related sciences, and to identify concerns related to providing medico-legal opinions and legal liability in cases in which possible harm in terms of diagnosis and/or treatment is likely to occur when using an advanced system of computer-based information processing and analysis.

Materials and methods. The material for the study comprised scientific literature related to the issue of artificial intelligence in forensic medicine and related sciences. For this purpose, Google Scholar, PubMed and ScienceDirect databases were searched. To identify useful articles, such terms as „artificial intelligence,” „deep learning,” „machine learning,” „forensic medicine,” „legal medicine,” „forensic pathology” and „medicine” were used. In some cases, articles were identified based on the semantic proximity of the introduced terms.

Conclusions. Dynamic development of the computing power and the ability of artificial intelligence to analyze vast data volumes made it possible to transfer artificial intelligence methods to forensic medicine and related sciences. Artificial intelligence has numerous applications in forensic medicine and related sciences and can be helpful in thanatology, forensic traumatology, post-mortem identification examinations, as well as post-mortem microscopic and toxicological diagnostics. Analyzing the legal and medico-legal aspects, artificial intelligence in medicine should be treated as an auxiliary tool, whereas the final diagnostic and therapeutic decisions and the extent to which they are implemented should be the responsibility of humans.

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Informacje

Informacje: Archiwum Medycyny Sądowej i Kryminologii, 2024, Vol. 74 (1), s. 64 - 76

Typ artykułu: Oryginalny artykuł naukowy

Tytuły:

Angielski: Artificial intelligence in forensic medicine and related sciences - selected issues
Polski: Artificial intelligence in forensic medicine and related sciences – selected issues = Sztuczna inteligencja w medycynie sądowej i naukach pokrewnych – wybrane zagadnienia

Autorzy

https://orcid.org/0000-0001-5845-0053

Michał Szeremeta
Zakład Medycyny Sądowej, Uniwersytet Medyczny w Białymstoku
https://orcid.org/0000-0001-5845-0053 Orcid
Kontakt z autorem
Wszystkie publikacje autora →

Zakład Medycyny Sądowej, Uniwersytet Medyczny w Białymstoku

Studenckie Koło Naukowe przy Zakładzie Medycyny Sądowej Uniwersytet Medyczny w Białymstoku

https://orcid.org/0000-0003-2807-8312

Anna Niemcunowicz-Janica
Zakład Medycyny Sądowej, Uniwersytet Medyczny w Białymstoku
https://orcid.org/0000-0003-2807-8312 Orcid
Wszystkie publikacje autora →

Zakład Medycyny Sądowej, Uniwersytet Medyczny w Białymstoku

Publikacja: 04.06.2024

Otrzymano: 23.02.2024

Zaakceptowano: 16.04.2024

Status artykułu: Otwarte __T_UNLOCK

Licencja: CC-BY-NC-SA  ikona licencji

Udział procentowy autorów:

Michał Szeremeta (Autor) - 33.33%
Julia Janica (Autor) - 33.33%
Anna Niemcunowicz-Janica (Autor) - 33.33%

Korekty artykułu:

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Języki publikacji:

Angielski, Polski