Hostetter Jason M, Morrison James J, Morris Michael, Jeudy Jean, Wang Kenneth C, Siegel Eliot
Department of Diagnostic Radiology and Nuclear Medicine, University of Maryland Medical Center, Baltimore, MD, USA.
Imaging Service, Baltimore Veterans Affairs Medical Center, Baltimore, MD, USA.
J Am Med Inform Assoc. 2017 Nov 1;24(6):1046-1051. doi: 10.1093/jamia/ocx012.
To demonstrate a data-driven method for personalizing lung cancer risk prediction using a large clinical dataset.
An algorithm was used to categorize nodules found in the first screening year of the National Lung Screening Trial as malignant or nonmalignant. Risk of malignancy for nodules was calculated based on size criteria according to the Fleischner Society recommendations from 2005, along with the additional discriminators of pack-years smoking history, sex, and nodule location. Imaging follow-up recommendations were assigned according to Fleischner size category malignancy risk.
Nodule size correlated with malignancy risk as predicted by the Fleischner Society recommendations. With the additional discriminators of smoking history, sex, and nodule location, significant risk stratification was observed. For example, men with ≥60 pack-years smoking history and upper lobe nodules measuring >4 and ≤6 mm demonstrated significantly increased risk of malignancy at 12.4% compared to the mean of 3.81% for similarly sized nodules (P < .0001). Based on personalized malignancy risk, 54% of nodules >4 and ≤6 mm were reclassified to longer-term follow-up than recommended by Fleischner. Twenty-seven percent of nodules ≤4 mm were reclassified to shorter-term follow-up.
Using available clinical datasets such as the National Lung Screening Trial in conjunction with locally collected datasets can help clinicians provide more personalized malignancy risk predictions and follow-up recommendations.
By incorporating 3 demographic data points, the risk of lung nodule malignancy within the Fleischner categories can be considerably stratified and more personalized follow-up recommendations can be made.
运用大型临床数据集,展示一种用于个性化肺癌风险预测的数据驱动方法。
采用一种算法,将国家肺癌筛查试验首次筛查年度发现的结节分类为恶性或非恶性。根据2005年弗莱施纳学会的建议,基于大小标准计算结节的恶性风险,并结合吸烟包年史、性别和结节位置等额外的判别因素。根据弗莱施纳大小类别恶性风险指定影像随访建议。
结节大小与弗莱施纳学会建议预测的恶性风险相关。结合吸烟史、性别和结节位置等额外判别因素,观察到显著的风险分层。例如,吸烟史≥60包年且上叶结节直径>4且≤6mm的男性,其恶性风险显著增加,为12.4%,而同样大小结节的平均恶性风险为3.81%(P < 0.0001)。基于个性化恶性风险,54%直径>4且≤6mm的结节被重新分类为比弗莱施纳建议更长时间的随访。27%直径≤4mm的结节被重新分类为更短时间的随访。
利用国家肺癌筛查试验等可用临床数据集以及本地收集的数据集,可帮助临床医生提供更个性化的恶性风险预测和随访建议。
通过纳入三个人口统计学数据点,弗莱施纳分类内肺结节恶性风险可得到显著分层,并可做出更个性化的随访建议。