Litcius/Paper detail

Rapid identification of human ovarian cancer in second harmonic generation images using radiomics feature analyses and tree‐based pipeline optimization tool

Guangxing Wang, Yang Sun, Youting Chen, Qiqi Gao, Dongqing Peng, Hongxin Lin, Zhenlin Zhan, Zhiyi Liu, Shuangmu Zhuo

2020Journal of Biophotonics26 citationsDOI

Abstract

Ovarian cancer is currently one of the most common cancers of the female reproductive organs, and its mortality rate is the highest among all types of gynecologic cancers. Rapid and accurate classification of ovarian cancer plays an important role in the determination of treatment plans and prognoses. Nevertheless, the most commonly used classification method is based on histopathological specimen examination, which is time-consuming and labor-intensive. Thus, in this study, we utilize radiomics feature extraction methods and the automated machine learning tree-based pipeline optimization tool (TOPT) for analysis of 3D, second harmonic generation images of benign, malignant and normal human ovarian tissues, to develop a high-efficiency computer-aided diagnostic model. Area under the receiver operating characteristic curve values of 0.98, 0.96 and 0.94 were obtained, respectively, for the classification of the three tissue types. Furthermore, this approach can be readily applied to other related tissues and diseases, and has great potential for improving the efficiency of medical diagnostic processes.

Topics & Concepts

Ovarian cancerPipeline (software)Receiver operating characteristicComputer scienceTree (set theory)Artificial intelligenceFeature (linguistics)Pattern recognition (psychology)Identification (biology)Feature extractionCancerStage (stratigraphy)Machine learningMedicineBiologyMathematicsInternal medicinePhilosophyMathematical analysisProgramming languageBotanyLinguisticsPaleontologyRadiomics and Machine Learning in Medical ImagingOvarian cancer diagnosis and treatmentCancer-related molecular mechanisms research