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人工神经网络对结直肠癌手术时间的个体化预测

Artificial Neural Network Individualised Prediction of Time to Colorectal Cancer Surgery.

作者信息

Curtis N J, Dennison G, Salib E, Hashimoto D A, Francis N K

机构信息

Department of Surgery and Cancer, Imperial College London, Level 10, St. Mary's Hospital, Praed Street, London W2 1NY, UK.

Department of General Surgery, Yeovil District Hospital NHS Foundation Trust, Higher Kingston, Yeovil BA21 4AT, UK.

出版信息

Gastroenterol Res Pract. 2019 Jul 9;2019:1285931. doi: 10.1155/2019/1285931. eCollection 2019.

Abstract

AIM

Colorectal cancer pathway targets mandate prompt treatment although practicalities may mean patients wait for surgery. This variable period could be utilised for patient optimisation; however, there is currently no reliable predictive system for time to surgery. If individualised surgical waits were prospectively known, tailored prehabilitation could be introduced.

METHODS

A dedicated, prospectively populated elective laparoscopic surgery for colorectal cancer with a curative intent database was utilised. Primary endpoint was the prediction of the individualised waiting time for surgery. A multilayered perceptron artificial neural network (ANN) model was trained and tested alongside uni- and multivariate analyses.

RESULTS

668 consecutive patients were included. 8.5% underwent neoadjuvant chemoradiotherapy. The mean time from diagnosis to surgery was 53 days (95% CI 48.3-57.8). ANN correctly identified those having surgery in <8 (97.7% and 98.8%) and <12 weeks (97.1% and 98.8%) of the training and testing cohorts with area under the receiver operating curves of 0.793 and 0.865, respectively. After neoadjuvant treatment, an ASA physical status score was the most important potentially modifiable risk factor for prolonged waits (normalised importance 64%, OR 4.9, 95% CI 1.5-16). The ANN findings were accurately cross-validated with a logistic regression model.

CONCLUSION

Artificial neural networks using demographic and diagnostic data successfully predict individual time to colorectal cancer surgery. This could assist the personalisation of preoperative care including the incorporation of prehabilitation interventions.

摘要

目的

尽管实际情况可能意味着患者等待手术,但结直肠癌通路靶点要求及时治疗。这段可变的时间可用于患者优化;然而,目前尚无可靠的手术时间预测系统。如果能前瞻性地知道个体化的手术等待时间,就可以引入量身定制的术前康复训练。

方法

利用一个专门的、前瞻性建立的以根治为目的的结直肠癌择期腹腔镜手术数据库。主要终点是预测个体化的手术等待时间。训练并测试了一个多层感知器人工神经网络(ANN)模型,并与单变量和多变量分析进行对比。

结果

纳入668例连续患者。8.5%接受了新辅助放化疗。从诊断到手术的平均时间为53天(95%CI 48.3-57.8)。ANN在训练队列和测试队列中分别正确识别出在<8周(97.7%和98.8%)和<12周(97.1%和98.8%)内进行手术的患者,受试者工作特征曲线下面积分别为0.793和0.865。新辅助治疗后,美国麻醉医师协会(ASA)身体状况评分是等待时间延长的最重要潜在可改变风险因素(标准化重要性64%,OR 4.9,95%CI 1.5-16)。ANN的结果通过逻辑回归模型得到了准确的交叉验证。

结论

利用人口统计学和诊断数据的人工神经网络成功预测了结直肠癌手术的个体时间。这有助于术前护理的个性化,包括纳入术前康复干预措施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cd6a/6652036/98bb40e779d5/GRP2019-1285931.001.jpg

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