医学
无线电技术
肺癌
分割
阶段(地层学)
专业
放射科
危险系数
比例危险模型
核医学
人工智能
肿瘤科
内科学
病理
计算机科学
置信区间
生物
古生物学
作者
Michelle Hershman,Bardia Yousefi,Lacey Serletti,Maya Galperin-Aizenberg,Leonid Roshkovan,José Marcio Luna,Jeffrey C. Thompson,Charu Aggarwal,Erica L. Carpenter,Despina Kontos,Sharyn I. Katz
出处
期刊:Cancers
[MDPI AG]
日期:2021-11-28
卷期号:13 (23): 5985-5985
被引量:17
标识
DOI:10.3390/cancers13235985
摘要
This study tackles interobserver variability with respect to specialty training in manual segmentation of non-small cell lung cancer (NSCLC). Four readers included for segmentation are: a data scientist (BY), a medical student (LS), a radiology trainee (MH), and a specialty-trained radiologist (SK) for a total of 293 patients from two publicly available databases. Sørensen–Dice (SD) coefficients and low rank Pearson correlation coefficients (CC) of 429 radiomics were calculated to assess interobserver variability. Cox proportional hazard (CPH) models and Kaplan-Meier (KM) curves of overall survival (OS) prediction for each dataset were also generated. SD and CC for segmentations demonstrated high similarities, yielding, SD: 0.79 and CC: 0.92 (BY-SK), SD: 0.81 and CC: 0.83 (LS-SK), and SD: 0.84 and CC: 0.91 (MH-SK) in average for both databases, respectively. OS through the maximal CPH model for the two datasets yielded c-statistics of 0.7 (95% CI) and 0.69 (95% CI), while adding radiomic and clinical variables (sex, stage/morphological status, and histology) together. KM curves also showed significant discrimination between high- and low-risk patients (p-value < 0.005). This supports that readers’ level of training and clinical experience may not significantly influence the ability to extract accurate radiomic features for NSCLC on CT. This potentially allows flexibility in the training required to produce robust prognostic imaging biomarkers for potential clinical translation.
科研通智能强力驱动
Strongly Powered by AbleSci AI