Suppr超能文献

利用性别、年龄和全血细胞计数数据的机器学习模型检测早期结直肠癌

Early Colorectal Cancer Detected by Machine Learning Model Using Gender, Age, and Complete Blood Count Data.

作者信息

Hornbrook Mark C, Goshen Ran, Choman Eran, O'Keeffe-Rosetti Maureen, Kinar Yaron, Liles Elizabeth G, Rust Kristal C

机构信息

Kaiser Permanente Center for Health Research, 3800 North Interstate Avenue, Portland, OR, 97227-1110, USA.

Medial EarlySign Inc., 11 HaZait St., Kfar Malal, Israel.

出版信息

Dig Dis Sci. 2017 Oct;62(10):2719-2727. doi: 10.1007/s10620-017-4722-8. Epub 2017 Aug 23.

Abstract

BACKGROUND

Machine learning tools identify patients with blood counts indicating greater likelihood of colorectal cancer and warranting colonoscopy referral.

AIMS

To validate a machine learning colorectal cancer detection model on a US community-based insured adult population.

METHODS

Eligible colorectal cancer cases (439 females, 461 males) with complete blood counts before diagnosis were identified from Kaiser Permanente Northwest Region's Tumor Registry. Control patients (n = 9108) were randomly selected from KPNW's population who had no cancers, received at ≥1 blood count, had continuous enrollment from 180 days prior to the blood count through 24 months after the count, and were aged 40-89. For each control, one blood count was randomly selected as the pseudo-colorectal cancer diagnosis date for matching to cases, and assigned a "calendar year" based on the count date. For each calendar year, 18 controls were randomly selected to match the general enrollment's 10-year age groups and lengths of continuous enrollment. Prediction performance was evaluated by area under the curve, specificity, and odds ratios.

RESULTS

Area under the receiver operating characteristics curve for detecting colorectal cancer was 0.80 ± 0.01. At 99% specificity, the odds ratio for association of a high-risk detection score with colorectal cancer was 34.7 (95% CI 28.9-40.4). The detection model had the highest accuracy in identifying right-sided colorectal cancers.

CONCLUSIONS

ColonFlag identifies individuals with tenfold higher risk of undiagnosed colorectal cancer at curable stages (0/I/II), flags colorectal tumors 180-360 days prior to usual clinical diagnosis, and is more accurate at identifying right-sided (compared to left-sided) colorectal cancers.

摘要

背景

机器学习工具可识别出血液计数显示患结直肠癌可能性更大且需要转诊进行结肠镜检查的患者。

目的

在美国以社区为基础的参保成年人群中验证一种机器学习结直肠癌检测模型。

方法

从凯撒永久医疗集团西北地区肿瘤登记处识别出诊断前有全血细胞计数的符合条件的结直肠癌病例(439名女性,461名男性)。对照患者(n = 9108)从KPNW的人群中随机选取,这些人无癌症,接受过≥1次全血细胞计数,从血细胞计数前180天至计数后24个月持续参保,年龄在40 - 89岁。对于每个对照,随机选择一次全血细胞计数作为与病例匹配的假结直肠癌诊断日期,并根据计数日期分配一个“日历年”。对于每个日历年,随机选择18名对照以匹配总体参保人群的10岁年龄组和持续参保时长。通过曲线下面积、特异性和比值比评估预测性能。

结果

检测结直肠癌的受试者操作特征曲线下面积为0.80±0.01。在99%特异性时,高危检测评分与结直肠癌关联的比值比为34.7(95%CI 28.9 - 40.4)。该检测模型在识别右侧结直肠癌方面具有最高的准确性。

结论

ColonFlag可识别出在可治愈阶段(0/I/II期)未诊断的结直肠癌风险高10倍的个体,在常规临床诊断前180 - 360天标记结直肠肿瘤,并且在识别右侧(与左侧相比)结直肠癌方面更准确。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验