High-Wavenumber Infrared Spectroscopy of Blood Plasma for Pre-Eclampsia Detection with Machine Learning

article
Autores

Reganin Monteiro, Gabriela

Silva, Sara Maria Santos Dias Da

Rizzato, Jaqueline Maria Brandão

Silva, Simone De Lima

Cortelli, Sheila Cavalca

Silva, Rodrigo Augusto

Nogueira, Marcelo Saito

Silva De Carvalho, Luis Felipe Das Chagas E

Data de Publicação

5 de outubro de 2024

Resumo

Early detection of pre-eclampsia is challenging due to the low sensitivity and specificity of current clinical methods and biomarkers. This study investigates the potential of high-wavenumber FTIR spectroscopy (region between 2800 and 3600 cm−1) as an innovative diagnostic approach capable of providing comprehensive biochemical insights with minimal sample preparation. Blood samples were collected from 33 pregnant women and their corresponding 33 newborns during induction or spontaneous labor. By analyzing the dried blood plasma samples, we identified biomarkers associated with FTIR vibrational modes, including 2853.6 cm−1 (CH2 stretching in lipids), 2873.0 cm−1 (CH3 stretching in lipids and proteins), and 3279.7 cm−1 (O–H stretching related to water and proteins). Machine learning classification revealed 76.3% ± 3.5% sensitivity and 56.1% ± 4.4% specificity in distinguishing between pre-eclamptic and non-pre-eclamptic pregnant women, along with 79.0% ± 3.5% sensitivity and 76.9% ± 6.2% specificity for newborns. The overall accuracy for classifying all pregnant women and newborns was 71.8% ± 2.5%. The results indicate that high-wavenumber FTIR spectroscopy can enhance classification performance when combined with other analytical methods. Our findings suggest that investigating hydrophilic sites may complement plasma analysis in clinical settings.

Citação

BibTeX
@online{monteiro,_gabriela2024,
  author = {Monteiro, Gabriela, Reganin and Sara Maria Santos Dias Da ,
    Silva and Jaqueline Maria Brandão , Rizzato and Simone De Lima ,
    Silva and Sheila Cavalca , Cortelli and Rodrigo Augusto , Silva and
    Marcelo Saito , Nogueira and De Carvalho, Luis Felipe Das Chagas E,
    Silva},
  title = {High-Wavenumber Infrared Spectroscopy of Blood Plasma for
    Pre-Eclampsia Detection with Machine Learning},
  volume = {11},
  number = {10},
  date = {2024-10-05},
  doi = {10.3390/photonics11100937},
  langid = {pt-BR},
  abstract = {Early detection of pre-eclampsia is challenging due to the
    low sensitivity and specificity of current clinical methods and
    biomarkers. This study investigates the potential of high-wavenumber
    FTIR spectroscopy (region between 2800 and 3600 cm−1) as an
    innovative diagnostic approach capable of providing comprehensive
    biochemical insights with minimal sample preparation. Blood samples
    were collected from 33 pregnant women and their corresponding 33
    newborns during induction or spontaneous labor. By analyzing the
    dried blood plasma samples, we identified biomarkers associated with
    FTIR vibrational modes, including 2853.6 cm−1 (CH2 stretching in
    lipids), 2873.0 cm−1 (CH3 stretching in lipids and proteins), and
    3279.7 cm−1 (O–H stretching related to water and proteins). Machine
    learning classification revealed 76.3\% ± 3.5\% sensitivity and
    56.1\% ± 4.4\% specificity in distinguishing between pre-eclamptic
    and non-pre-eclamptic pregnant women, along with 79.0\% ± 3.5\%
    sensitivity and 76.9\% ± 6.2\% specificity for newborns. The overall
    accuracy for classifying all pregnant women and newborns was 71.8\%
    ± 2.5\%. The results indicate that high-wavenumber FTIR spectroscopy
    can enhance classification performance when combined with other
    analytical methods. Our findings suggest that investigating
    hydrophilic sites may complement plasma analysis in clinical
    settings.}
}
Por favor, cite este trabalho como:
Monteiro, Gabriela, Reganin, Silva Sara Maria Santos Dias Da, Rizzato Jaqueline Maria Brandão, Silva Simone De Lima, Cortelli Sheila Cavalca, Silva Rodrigo Augusto, Nogueira Marcelo Saito, and Silva De Carvalho, Luis Felipe Das Chagas E. 2024. “High-Wavenumber Infrared Spectroscopy of Blood Plasma for Pre-Eclampsia Detection with Machine Learning.” Photonics. October 5, 2024. https://doi.org/10.3390/photonics11100937.