Clinical application of Raman spectroscopy in gynecology

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Resumo

Existing screening and diagnostic methods for some gynecological pathologies have limited diagnostic accuracy due to invasiveness, high cost and labor intensity, as well as the need to use complex approaches to establish a final diagnosis. In recent years, the attention of researchers has been attracted by spectroscopic methods, in particular Raman spectroscopy, which opens up new prospects in the diagnosis of a number of gynecological diseases.

Sobre autores

D. Lystsev

Sechenov First Moscow State Medical University

Autor responsável pela correspondência
Email: rchilova@gmail.com
ORCID ID: 0009-0006-3826-3174
Rússia, Moscow

V. Kaptilny

Sechenov First Moscow State Medical University

Email: rchilova@gmail.com
ORCID ID: 0000-0002-2656-132X
Código SPIN: 4312-3455

Candidate of Medical Sciences

Rússia, Moscow

V. Zuev

Sechenov First Moscow State Medical University

Email: rchilova@gmail.com
ORCID ID: 0000-0001-8715-2020
Código SPIN: 2857-0309

MD, Professor

Rússia, Moscow

R. Chilova

Sechenov First Moscow State Medical University

Email: rchilova@gmail.com
ORCID ID: 0000-0001-6331-3109
Código SPIN: 4137-4848

MD, Professor

Rússia, Moscow

Bibliografia

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