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Erschienen in: Lasers in Medical Science 8/2018

04.06.2018 | Original Article

Raman spectral feature selection using ant colony optimization for breast cancer diagnosis

verfasst von: Omid Fallahzadeh, Zohreh Dehghani-Bidgoli, Mohammad Assarian

Erschienen in: Lasers in Medical Science | Ausgabe 8/2018

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Abstract

Pathology as a common diagnostic test of cancer is an invasive, time-consuming, and partially subjective method. Therefore, optical techniques, especially Raman spectroscopy, have attracted the attention of cancer diagnosis researchers. However, as Raman spectra contain numerous peaks involved in molecular bounds of the sample, finding the best features related to cancerous changes can improve the accuracy of diagnosis in this method. The present research attempted to improve the power of Raman-based cancer diagnosis by finding the best Raman features using the ACO algorithm. In the present research, 49 spectra were measured from normal, benign, and cancerous breast tissue samples using a 785-nm micro-Raman system. After preprocessing for removal of noise and background fluorescence, the intensity of 12 important Raman bands of the biological samples was extracted as features of each spectrum. Then, the ACO algorithm was applied to find the optimum features for diagnosis. As the results demonstrated, by selecting five features, the classification accuracy of the normal, benign, and cancerous groups increased by 14% and reached 87.7%. ACO feature selection can improve the diagnostic accuracy of Raman-based diagnostic models. In the present study, features corresponding to ν(C–C) αhelix proline, valine (910–940), νs(C–C) skeletal lipids (1110–1130), and δ(CH2)/δ(CH3) proteins (1445–1460) were selected as the best features in cancer diagnosis.
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Metadaten
Titel
Raman spectral feature selection using ant colony optimization for breast cancer diagnosis
verfasst von
Omid Fallahzadeh
Zohreh Dehghani-Bidgoli
Mohammad Assarian
Publikationsdatum
04.06.2018
Verlag
Springer London
Erschienen in
Lasers in Medical Science / Ausgabe 8/2018
Print ISSN: 0268-8921
Elektronische ISSN: 1435-604X
DOI
https://doi.org/10.1007/s10103-018-2544-3

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