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利用非成像信息和连续医疗记录评估深度学习以开发非黑色素瘤皮肤癌预测模型。

Assessment of Deep Learning Using Nonimaging Information and Sequential Medical Records to Develop a Prediction Model for Nonmelanoma Skin Cancer.

作者信息

Wang Hsiao-Han, Wang Yu-Hsiang, Liang Chia-Wei, Li Yu-Chuan

机构信息

Department of Dermatology, Wan Fang Hospital, Taipei Medical University, Taipei, Taiwan.

Graduate Institute of Biomedical Informatics, College of Medical Science and Technology, Taipei Medical University, Taipei, Taiwan.

出版信息

JAMA Dermatol. 2019 Nov 1;155(11):1277-1283. doi: 10.1001/jamadermatol.2019.2335.

Abstract

IMPORTANCE

A prediction model for new-onset nonmelanoma skin cancer could enhance prevention measures, but few patient data-driven tools exist for more accurate prediction.

OBJECTIVE

To use machine learning to develop a prediction model for incident nonmelanoma skin cancer based on large-scale, multidimensional, nonimaging medical information.

DESIGN, SETTING, AND PARTICIPANTS: This study used a database comprising 2 million randomly sampled patients from the Taiwan National Health Insurance Research Database from January 1, 1999, to December 31, 2013. A total of 1829 patients with nonmelanoma skin cancer as their first diagnosed cancer and 7665 random controls without cancer were included in the analysis. A convolutional neural network, a deep learning approach, was used to develop a risk prediction model. This risk prediction model used 3-year clinical diagnostic information, medical records, and temporal-sequential information to predict the skin cancer risk of a given patient within the next year. Stepwise feature selection was also performed to investigate important and determining factors of the model. Statistical analysis was performed from November 1, 2016, to October 31, 2018.

MAIN OUTCOMES AND MEASURES

Sensitivity, specificity, and area under the receiver operating characteristic (AUROC) curve were used to evaluate the performance of the models.

RESULTS

A total of 1829 patients (923 women [50.5%] and 906 men [49.5%]; mean [SD] age, 65.3 [15.7] years) with nonmelanoma skin cancer and 7665 random controls without cancer (3951 women [51.5%] and 3714 men [48.4%]; mean [SD] age, 47.5 [17.3] years) were included in the analysis. The 1-year incident nonmelanoma skin cancer risk prediction model using sequential diagnostic information and drug prescription information as a time-incorporated feature matrix could attain an AUROC of 0.89 (95% CI, 0.87-0.91), with a mean (SD) sensitivity of 83.1% (3.5%) and mean (SD) specificity of 82.3% (4.1%). Carcinoma in situ of skin (AUROC, 0.867; -2.80% loss) and other chronic comorbidities (eg, degenerative osteopathy [AUROC, 0.872; -2.32% loss], hypertension [AUROC, 0.879; -1.53% loss], and chronic kidney insufficiency [AUROC, 0.879; -1.52% loss]) served as more discriminative factors for the prediction. Medications such as trazodone, acarbose, systemic antifungal agents, statins, nonsteroidal anti-inflammatory drugs, and thiazide diuretics were the top-ranking discriminative features in the model; each led to more than a 1% decrease of the AUROC when eliminated individually (eg, trazodone AUROC, 0.868; -2.67% reduction; acarbose AUROC, 0.870; -2.50 reduction; and systemic antifungal agents AUROC, 0.875; -1.99 reduction).

CONCLUSIONS AND RELEVANCE

The findings of this study suggest that a risk prediction model may have potential predictive factors for nonmelanoma skin cancer. This model may help health care professionals target high-risk populations for more intensive skin cancer preventive methods.

摘要

重要性

新发非黑色素瘤皮肤癌的预测模型可加强预防措施,但目前基于患者数据的准确预测工具较少。

目的

利用机器学习,基于大规模、多维度、非影像医学信息,开发一种预测非黑色素瘤皮肤癌发病的模型。

设计、地点和参与者:本研究使用了一个数据库,该数据库包含从1999年1月1日至2013年12月31日从台湾国民健康保险研究数据库中随机抽取的200万患者。分析纳入了1829例首次诊断为非黑色素瘤皮肤癌的患者和7665例无癌症的随机对照者。采用深度学习方法卷积神经网络开发风险预测模型。该风险预测模型使用3年临床诊断信息、病历和时间序列信息来预测给定患者下一年患皮肤癌的风险。还进行了逐步特征选择,以研究模型的重要和决定性因素。统计分析于2016年11月1日至2018年10月31日进行。

主要结局和指标

使用敏感性、特异性和受试者操作特征曲线下面积(AUROC)来评估模型性能。

结果

分析纳入了1829例非黑色素瘤皮肤癌患者(923例女性[50.5%]和906例男性[49.5%];平均[标准差]年龄为65.3[15.7]岁)和7665例无癌症的随机对照者(3951例女性[51.5%]和3714例男性[48.4%];平均[标准差]年龄为47.5[17.3]岁)。使用连续诊断信息和药物处方信息作为时间纳入特征矩阵的1年新发非黑色素瘤皮肤癌风险预测模型的AUROC可达0.89(95%CI,0.87 - 0.91),平均(标准差)敏感性为83.1%(3.5%),平均(标准差)特异性为82.3%(4.1%)。皮肤原位癌(AUROC,0.867;损失 - 2.80%)和其他慢性合并症(如退行性骨病[AUROC,0.872;损失 - 2.32%]、高血压[AUROC,0.879;损失 - 1.53%]和慢性肾功能不全[AUROC,0.879;损失 - 1.52%])是更具鉴别力的预测因素。曲唑酮、阿卡波糖、全身性抗真菌药、他汀类药物、非甾体抗炎药和噻嗪类利尿剂等药物是模型中排名靠前的鉴别特征;当单独去除每种药物时,AUROC均下降超过1%(例如,曲唑酮AUROC,0.868;降低 - 2.67%;阿卡波糖AUROC,0.870;降低 - 2.50%;全身性抗真菌药AUROC,0.875;降低 - 1.99%)。

结论与意义

本研究结果表明,风险预测模型可能具有非黑色素瘤皮肤癌的潜在预测因素。该模型可能有助于医护人员针对高危人群采取更强化的皮肤癌预防方法。

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