利用机器学习寻找醛糖还原酶抑制剂治疗糖尿病性白内障。

Trevor Chen , Richard Chen , Alvin You , Valentina L. Kouznetsova , Igor F. Tsigelny
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引用次数: 1

摘要

目的:糖尿病患者患白内障的几率较高,白内障是一种退行性视力受损的疾病,通常需要手术治疗。导致白内障的人眼晶状体中葡萄糖还原为山梨醇的过程由醛糖还原酶(AR)控制,已经发现AR抑制剂可以减轻糖尿病性白内障的发作。存在大量可以预防糖尿病并发症的天然和合成AR抑制剂,机器学习(ML)预测模型的开发可能会使具有更好特性的新型AR抑制剂投入临床使用。方法:使用已知的AR抑制剂及其化学-物理描述符,我们创建了预测新AR抑制剂的ML模型。预测的抑制剂通过与AR结合位点的计算对接进行了测试。结果:使用交叉验证,为了找到最准确的ML模型,我们最终的交叉验证准确率为90%。预测抑制剂的计算对接测试给出了ML预测分数和结合自由能之间的高度相关性。结论:由于多种原因,目前已知的AR抑制剂尚未用于患者。我们认为,新的预测AR抑制剂有可能具有更有利的特性,在临床测试后成功实施。探索新的抑制剂可以改善患者的健康状况,降低手术并发症,同时减少长期医疗费用。
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Search of inhibitors of aldose reductase for treatment of diabetic cataracts using machine learning

Purpose

Patients with diabetes mellitus have an elevated chance of developing cataracts, a degenerative vision-impairing condition often needing surgery. The process of the reduction of glucose to sorbitol in the lens of the human eye that causes cataracts is managed by the Aldose Reductase Enzyme (AR), and it is been found that AR inhibitors may mitigate the onset of diabetic cataracts. There exists a large pool of natural and synthetic AR inhibitors that can prevent diabetic complications, and the development of a machine-learning (ML) prediction model may bring new AR inhibitors with better characteristics into clinical use.

Methods

Using known AR inhibitors and their chemical-physical descriptors we created the ML model for prediction of new AR inhibitors. The predicted inhibitors were tested by computational docking to the binding site of AR.

Results

Using cross-validation in order to find the most accurate ML model, we ended with final cross-validation accuracy of 90%. Computational docking testing of the predicted inhibitors gave a high level of correlation between the ML prediction score and binding free energy.

Conclusions

Currently known AR inhibitors are not used yet for patients for several reasons. We think that new predicted AR inhibitors have the potential to possess more favorable characteristics to be successfully implemented after clinical testing. Exploring new inhibitors can improve patient well-being and lower surgical complications all while decreasing long-term medical expenses.

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审稿时长
66 days
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Global research trends in the treatment of squamous cell carcinoma over the past decade: A bibliometric analysis Understanding parental hurdles in accessing strabismus treatment Research progress on the impact of cataract surgery on corneal endothelial cells Editorial Board TOC
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