A neural network model for predicting the effectiveness of treatment in patients with neovascular glaucoma associated with diabetes mellitus.

Olga Volodymyrivna Guzun, Oleg Serhiyovich Zadorozhnyy, Volodymyr Viktorovych Vychuzhanin, Natalia Ivanivna Khramenko, Liudmyla Mykolayivna Velichko, Andrii Rostyslavovich Korol, Valeriu Nicon Cușnir, Lilia Gheorghe Dumbrăveanu, Vitalie Valeriu Cușnir
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Abstract

Introduction: The study hypothesizes that neural networks can be an effective tool for predicting treatment outcomes in patients with diabetic neovascular glaucoma (NVG), considering not only baseline intraocular pressure (IOP) values but also inflammation and intraocular microcirculation indicators.

Objective: To investigate the diagnostic significance of inflammation and intraocular blood circulation indicators in a neural network model predicting the effectiveness of transscleral cyclophotocoagulation (TSC CPC) treatment in patients with NVG of diabetic origin.

Methods: This retrospective cohort study included 127 patients (127 eyes; aged Me 65.0 years) with painful diabetic NVG and 20 healthy individuals (aged Me 61.5 years) as an immunological control. All patients underwent TSC CPC with a diode laser. Treatment success was defined as achieving an IOP level of ≤ 21 mmHg and maintaining or improving best-corrected visual acuity (BCVA) after 12 months of observation. Preoperative systemic immune-inflammation index (SII = platelets × [neutrophils/lymphocytes]) and systemic inflammation response index (SIRI = neutrophils × [monocytes/lymphocytes]) were calculated. We assessed the values of volumetric pulse blood filling, determined by the rheographic coefficient (RQ, 0/00), using the rheoophthalmography (ROG) method. Multiple regression analysis was used to conclude the significance of treatment efficacy based on initial clinical and laboratory indicators, followed by constructing a prediction model in the neural network.

Results: The development of the neural network model identified the most significant "input" parameters: SIRI (100%), RQ (85.7%), and SII (80.7%), which significantly influenced treatment success. The sensitivity of the neural network model was 100%, specificity was 30%, and the percentage of correctly predicted events during testing on the control group was 92.9%.

Conclusions: Neural network-based prediction of transscleral cyclophotocoagulation effectiveness for patients with diabetic neovascular glaucoma allows for a sufficiently accurate forecast of treatment success with a probability of 92.9%. We believe the in-time correction of systemic inflammation and intraocular blood circulation can significantly reduce intraocular pressure, preserve visual acuity, and improve the quality of life in patients with diabetic NVG after TSC CPC. Further research is required to support these findings.

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预测伴有糖尿病的新生血管性青光眼患者治疗效果的神经网络模型。
导言该研究假设神经网络可以成为预测糖尿病新生血管性青光眼(NVG)患者治疗效果的有效工具,它不仅要考虑眼压(IOP)基线值,还要考虑炎症和眼内微循环指标:目的:探讨炎症和眼内血液循环指标在预测经巩膜环形光凝(TSC CPC)治疗糖尿病性 NVG 患者疗效的神经网络模型中的诊断意义:这项回顾性队列研究纳入了 127 名疼痛型糖尿病 NVG 患者(127 只眼,年龄为 65.0 岁)和 20 名健康人(年龄为 61.5 岁)作为免疫学对照。所有患者都接受了二极管激光 TSC CPC 治疗。治疗成功的定义是,经过 12 个月的观察,眼压≤ 21 mmHg,最佳矫正视力(BCVA)保持或有所提高。计算术前全身免疫炎症指数(SII = 血小板 × [中性粒细胞/淋巴细胞])和全身炎症反应指数(SIRI = 中性粒细胞 × [单核细胞/淋巴细胞])。我们使用流变眼图法(ROG)评估了由流变系数(RQ,0/00)确定的脉搏血液容积充盈值。根据最初的临床和实验室指标,采用多元回归分析法得出疗效的显著性结论,然后构建神经网络预测模型:结果:神经网络模型的建立确定了最重要的 "输入 "参数:结果:神经网络模型的建立确定了最重要的 "输入 "参数:SIRI(100%)、RQ(85.7%)和 SII(80.7%),它们对治疗成功率有显著影响。神经网络模型的灵敏度为 100%,特异性为 30%,在对照组测试中正确预测事件的百分比为 92.9%:基于神经网络的糖尿病新生血管性青光眼患者经巩膜环形光凝疗效预测可以充分准确地预测治疗成功的概率为 92.9%。我们相信,及时纠正全身炎症和眼内血液循环可显著降低眼压,保护视力,并改善糖尿病新生血管性青光眼患者在接受 TSC CPC 治疗后的生活质量。还需要进一步的研究来支持这些发现。
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