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利用临床病理因素预测肺癌患者的多类别死因。

Predict multicategory causes of death in lung cancer patients using clinicopathologic factors.

机构信息

School of Electrical and Electronic Engineering, Shanghai Institute of Technology, China.

Department of Pathology and Genomic Medicine, Houston Methodist Hospital, Houston, TX, USA.

出版信息

Comput Biol Med. 2021 Feb;129:104161. doi: 10.1016/j.compbiomed.2020.104161. Epub 2020 Dec 1.

Abstract

BACKGROUND

Random forests (RF) is a widely used machine-learning algorithm, and outperforms many other machine learning algorithms in prediction-accuracy. But it is rarely used for predicting causes of death (COD) in cancer patients. On the other hand, multicategory COD are difficult to classify in lung cancer patients, largely because they have multiple labels (versus binary labels).

METHODS

We tuned RF algorithms to classify 5-category COD among the lung cancer patients in the surveillance, epidemiology and end results-18, whose lung cancers were diagnosed in 2004, for the completeness in their follow-up. The patients were randomly divided into training and validation sets (1:1 and 4:1 sample-splits). We compared the prediction accuracy of the tuned RF and multinomial logistic regression (MLR) models.

RESULTS

We included 42,257 qualified lung cancers in the database. The COD were lung cancer (72.41%), other causes or alive (14.43%), non-lung cancer (6.85%), cardiovascular disease (5.35%), and infection (0.96%). The tuned RF model with 300 iterations and 10 variables outperformed the MLR model (accuracy = 69.8% vs 64.6%, 1:1 sample-split), while 4:1 sample-split produced lower prediction-accuracy than 1:1 sample-split. The top-10 important factors in the RF model were sex, chemotherapy status, age (65+ vs < 65 years), radiotherapy status, nodal status, T category, histology type and laterality, all of which except T category and laterality were also important in MLR model.

CONCLUSION

We tuned RF models to predict 5-category CODs in lung cancer patients, and show RF outperforms MLR in prediction accuracy. We also identified the factors associated with these COD.

摘要

背景

随机森林(RF)是一种广泛使用的机器学习算法,在预测准确性方面优于许多其他机器学习算法。但它很少用于预测癌症患者的死因(COD)。另一方面,多类别 COD 在肺癌患者中难以分类,主要是因为它们有多个标签(与二进制标签相比)。

方法

我们调整了 RF 算法,以对 Surveillance, Epidemiology and End Results-18 中的肺癌患者进行 5 类别 COD 分类,这些患者的肺癌于 2004 年确诊,随访较为完整。患者被随机分为训练集和验证集(1:1 和 4:1 样本分割)。我们比较了调整后的 RF 和多项逻辑回归(MLR)模型的预测准确性。

结果

我们在数据库中纳入了 42257 例符合条件的肺癌。COD 为肺癌(72.41%)、其他原因或存活(14.43%)、非肺癌(6.85%)、心血管疾病(5.35%)和感染(0.96%)。具有 300 次迭代和 10 个变量的调整 RF 模型优于 MLR 模型(准确性=69.8%比 64.6%,1:1 样本分割),而 4:1 样本分割的预测准确性低于 1:1 样本分割。RF 模型中的前 10 个重要因素为性别、化疗状态、年龄(65+岁与<65 岁)、放疗状态、淋巴结状态、T 分期、组织学类型和侧别,除 T 分期和侧别外,这些因素在 MLR 模型中也很重要。

结论

我们调整了 RF 模型以预测肺癌患者的 5 类别 COD,并显示 RF 在预测准确性方面优于 MLR。我们还确定了与这些 COD 相关的因素。

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