| Literature DB >> 34123488 |
Zengqi Yue1, Chen Sun1, Fengye Chen1, Yuqing Zhang1, Weijie Xu1, Sahar Shabbir1, Long Zou1, Weiguo Lu2, Wei Wang3, Zhenwei Xie2, Lanyun Zhou2, Yan Lu2,4, Jin Yu1,5.
Abstract
Early-stage screening and diagnosis of ovarian cancer represent an urgent need in medicine. Usual ultrasound imaging and cancer antigen CA-125 test when prescribed to a suspicious population still require reconfirmations. Spectroscopic analyses of blood, at the molecular and atomic levels, provide useful supplementary tests when coupled with effective information extraction methods. Laser-induced breakdown spectroscopy (LIBS) was employed in this work to record the elemental fingerprint of human blood plasma. A machine learning data treatment process was developed combining feature selection and regression with a back-propagation neural network, resulting in classification models for cancer detection among 176 blood plasma samples collected from patients, including also ovarian cyst and normal cases. Cancer diagnosis sensitivity and specificity of respectively 71.4% and 86.5% were obtained for randomly selected validation samples.Entities:
Year: 2021 PMID: 34123488 PMCID: PMC8176811 DOI: 10.1364/BOE.421961
Source DB: PubMed Journal: Biomed Opt Express ISSN: 2156-7085 Impact factor: 3.732