Shaia Jacqueline K, Alam Taseen A, Trinh Ilene P, Rock Jenna R, Chu Jeffrey Y, Schiltz Nicholas K, Singh Rishi P, Talcott Katherine E, Cohen Devon A
Department of Population and Quantitative Health Sciences (JKS, NKS), Case Western Reserve University, Cleveland, Ohio; Case Western Reserve School of Medicine (JKS, TAA, IPT, JRR, JYC), Cleveland, Ohio; Center for Ophthalmic Bioinformatics (JKS, RPS, KET), Cole Eye Institute, Cleveland Clinic, Cleveland, Ohio; School of Nursing, Case Western Reserve University (NKS), Cleveland, Ohio; Cleveland Clinic Cole Eye Institute (RPS, KET, DAC), Cleveland, Ohio; Cleveland Clinic Lerner College of Medicine of Case Western Reserve University (RPS, KET, DAC), Cleveland, Ohio; and Cleveland Clinic Martin Hospitals (RPS), Cleveland Clinic, Florida.
J Neuroophthalmol. 2025 May 15. doi: 10.1097/WNO.0000000000002340.
Idiopathic intracranial hypertension (IIH) is a vision-threatening disorder mainly affecting women of a reproductive age. Prompt diagnosis and intervention are vital to prevent vision loss, but validated tools to predict visual outcomes are lacking. The purpose of this study was to create a machine learning algorithm predicting poor visual outcomes at the time that the diagnosis of IIH is established, and stratifying risk among those with and without poor visual acuity at presentation.
Using electronic health records, a retrospective cohort study was conducted between June 1, 2012 and September 30, 2023. Any patient aged 0-70 years who was diagnosed with IIH and met the revised diagnostic criteria was included in the analysis. In total, 391 patients with IIH had final outcomes available and were included in this analysis. Final visual outcomes were reported between 3 months and 1 year after diagnosis. Poor visual outcomes served as the model outcome and was defined as a visual field mean deviation (VFMD) worse than -7 dB or a visual acuity of 20/80 or worse. Both logistic regression and decision trees were used to build predictive models. Models were evaluated using multiple parameters including accuracy, sensitivity, specificity, and area under the curve. The best performing models were validated using a k-fold cross-validation.
The decision tree models performed the best and 4 prognostic risk groups were created: critical, high, medium, and low. In the critical risk group, patients who had both high baseline VFMD (worse than -12.59 dB) and identified as non-White had a poor visual outcome risk of 92.6%. A baseline VFMD worse than -9.1 dB resulted in a critical risk of a poor visual outcome at 69.8%. Any patient with a baseline VFMD better than -3.39 dB had a risk of a poor visual outcome at 1.04%.
Our study provides clinicians with valuable prognostic markers to assist in identifying patients who are at critical risk for significant vision loss. Patients with a VFMD worse than -9.1 dB have a critical risk of a poor visual outcome, and this further increased if they identified as a minority patient.
特发性颅内高压(IIH)是一种威胁视力的疾病,主要影响育龄女性。及时诊断和干预对于预防视力丧失至关重要,但缺乏可验证的预测视力结果的工具。本研究的目的是创建一种机器学习算法,在IIH诊断确立时预测视力不良结果,并对就诊时视力正常和异常的患者进行风险分层。
利用电子健康记录,于2012年6月1日至2023年9月30日进行了一项回顾性队列研究。分析纳入了所有年龄在0至70岁、被诊断为IIH且符合修订诊断标准的患者。共有391例IIH患者有最终结果并纳入本分析。最终视力结果在诊断后3个月至1年内报告。视力不良结果作为模型结果,定义为视野平均偏差(VFMD)低于-7 dB或视力为20/80或更差。使用逻辑回归和决策树构建预测模型。使用包括准确性、敏感性、特异性和曲线下面积在内的多个参数对模型进行评估。使用k折交叉验证对表现最佳的模型进行验证。
决策树模型表现最佳,创建了4个预后风险组:危急、高、中、低。在危急风险组中,基线VFMD高(低于-12.59 dB)且为非白人的患者视力不良结果风险为92.6%。基线VFMD低于-9. dB导致视力不良结果的危急风险为69.8%。任何基线VFMD优于-3.39 dB的患者视力不良结果风险为1.04%。
我们的研究为临床医生提供了有价值的预后标志物,以帮助识别有严重视力丧失危急风险的患者。VFMD低于-9.1 dB的患者有视力不良结果的危急风险,如果他们是少数族裔患者,这种风险会进一步增加。