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鞍区肿瘤手术减压后视觉预后的机器学习预测

Machine Learning Prediction of Visual Outcome after Surgical Decompression of Sellar Region Tumors.

作者信息

Qiao Nidan, Ma Yichen, Chen Xiaochen, Ye Zhao, Ye Hongying, Zhang Zhaoyun, Wang Yongfei, Lu Zhaozeng, Wang Zhiliang, Xiao Yiqin, Zhao Yao

机构信息

Department of Neurosurgery, Huashan Hospital, Shanghai 200040, China.

Neurosurgical Institute, Fudan University, Shanghai 200040, China.

出版信息

J Pers Med. 2022 Jan 25;12(2):152. doi: 10.3390/jpm12020152.

Abstract

INTRODUCTION

This study aims to develop a machine learning-based model integrating clinical and ophthalmic features to predict visual outcomes after transsphenoidal resection of sellar region tumors.

METHODS

Adult patients with optic chiasm compression by a sellar region tumor were examined to develop a model, and an independent retrospective cohort and a prospective cohort were used to validate our model. Predictors included demographic information, and ophthalmic and laboratory test results. We defined "recovery" as more than 5% for a -value in mean deviation compared with the general population in the follow-up. Seven machine learning classifiers were employed, and the best-performing algorithm was selected. A decision curve analysis was used to assess the clinical usefulness of our model by estimating net benefit. We developed a nomogram based on essential features ranked by the SHAP score.

RESULTS

We included 159 patients (57.2% male), and the mean age was 42.3 years old. Among them, 96 patients were craniopharyngiomas and 63 patients were pituitary adenomas. Larger tumors (3.3 cm vs. 2.8 cm in tumor height) and craniopharyngiomas (73.6%) were associated with a worse prognosis ( < 0.001). Eyes with better outcomes were those with better visual field and thicker ganglion cell layer before operation. The ensemble model yielded the highest AUC of 0.911 [95% CI, 0.885-0.938], and the corresponding accuracy was 84.3%, with 0.863 in sensitivity and 0.820 in specificity. The model yielded AUCs of 0.861 and 0.843 in the two validation cohorts. Our model provided greater net benefit than the competing extremes of intervening in all or no patients in the decision curve analysis. A model explanation using SHAP score demonstrated that visual field, ganglion cell layer, tumor height, total thyroxine, and diagnosis were the most important features in predicting visual outcome.

CONCLUSION

SHAP score can be a valuable resource for healthcare professionals in identifying patients with a higher risk of persistent visual deficit. The large-scale and prospective application of the proposed model would strengthen its clinical utility and universal applicability in practice.

摘要

引言

本研究旨在开发一种基于机器学习的模型,整合临床和眼科特征,以预测鞍区肿瘤经蝶窦切除术后的视觉预后。

方法

对患有鞍区肿瘤导致视交叉受压的成年患者进行检查以建立模型,并使用独立的回顾性队列和前瞻性队列来验证我们的模型。预测因素包括人口统计学信息、眼科和实验室检查结果。我们将“恢复”定义为随访中平均偏差的a值与一般人群相比超过5%。采用了七种机器学习分类器,并选择了性能最佳的算法。通过估计净效益,使用决策曲线分析来评估我们模型的临床实用性。我们基于SHAP评分排序的基本特征开发了一个列线图。

结果

我们纳入了159例患者(男性占57.2%),平均年龄为42.3岁。其中,96例为颅咽管瘤,63例为垂体腺瘤。较大的肿瘤(肿瘤高度3.3 cm对2.8 cm)和颅咽管瘤(73.6%)与较差的预后相关(<0.001)。术前视野较好且神经节细胞层较厚的眼睛预后较好。集成模型的AUC最高,为0.911 [95% CI,0.885 - 0.938],相应的准确率为84.3%,灵敏度为0.863,特异度为0.820。该模型在两个验证队列中的AUC分别为0.861和0.843。在决策曲线分析中,我们的模型比在所有患者或无患者中进行干预的竞争极端情况提供了更大的净效益。使用SHAP评分的模型解释表明,视野、神经节细胞层、肿瘤高度、总甲状腺素和诊断是预测视觉预后的最重要特征。

结论

SHAP评分可为医疗保健专业人员识别持续性视力缺陷风险较高的患者提供有价值的参考。所提出模型的大规模前瞻性应用将加强其在实践中的临床实用性和普遍适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3d1e/8879436/7559547bfff9/jpm-12-00152-g001.jpg

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