An alpha-test of Diabetology.co.in—an algorithm-driven personalized and precision medicine prescription system for treatment-naive patients with type 2 diabetes

IF 0.7 4区 医学 Q4 ENDOCRINOLOGY & METABOLISM
Om Jitendra Lakhani, Arvind Gupta, Priti Tripathi, Chaitasy Mehta
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引用次数: 0

Abstract

Objective

This study evaluates Diabetology.co.in, an innovative algorithm-driven prescription system developed for personalized and precision treatment of treatment-naive patients with type 2 diabetes. It focuses on integrating computational medicine with clinical practice, leveraging artificial intelligence for optimized diabetes management.

Methods

A retrospective pilot study was conducted at a tertiary multispeciality hospital, assessing Diabetology.co.in’s alpha version. Data from the last fifty adult patients with type 2 diabetes from the outpatient Endocrinology OPD were analyzed. These patients were treatment-naive, excluding pregnant women and those with positive insulin antibodies or glucocorticoid use. Data, including clinical and laboratory parameters, were manually input into the system, which then generated evidence-based prescription recommendations using its algorithmic processing.

Results

The system processed data from 50 patients, with an average age of 41.9 years and a 40% female demographic. The application effectively utilized inputs like body mass index, glomerular filtration rate, and HbA1c levels to generate prescriptions. Metformin was universally recommended, with insulin prescribed for half of the patients, and SGLT2 inhibitors for 30%. The software’s suggestions showed a significant match with actual clinical prescriptions, indicating its accuracy and potential in aiding clinical decision-making. Notably, the software identified an overprescription tendency in clinician practices and provided insights into patient profiles through advanced data analysis capabilities, such as correlations between triglyceride levels and BMI.

Conclusion

Diabetology.co.in demonstrated high efficacy in generating precise and personalized treatment recommendations for newly diagnosed type 2 diabetes patients. It aligns closely with actual clinical prescriptions, showcasing its potential in reducing overprescription and contributing to evidence-based diabetes care.

Abstract Image

Diabetology.co.in--针对未接受治疗的 2 型糖尿病患者的算法驱动型个性化精准医疗处方系统的阿尔法测试
目的本研究评估了 Diabetology.co.in,这是一个创新的算法驱动处方系统,用于对未接受治疗的 2 型糖尿病患者进行个性化精准治疗。该系统的重点是将计算医学与临床实践相结合,利用人工智能优化糖尿病管理。方法在一家三级多专科医院开展了一项回顾性试点研究,评估 Diabetology.co.in 的 alpha 版本。研究分析了内分泌科门诊 2 型糖尿病成人患者中最近 50 名患者的数据。这些患者均未经治疗,不包括孕妇和胰岛素抗体阳性或使用糖皮质激素的患者。包括临床和实验室参数在内的数据由人工输入系统,然后系统通过算法处理生成循证处方建议。该应用程序有效利用了体重指数、肾小球滤过率和 HbA1c 水平等输入数据来生成处方。二甲双胍是普遍推荐的药物,胰岛素用于半数患者,SGLT2 抑制剂用于 30% 的患者。该软件的建议与实际临床处方的匹配度很高,表明其在辅助临床决策方面的准确性和潜力。值得注意的是,该软件发现了临床医生在临床实践中的超量处方倾向,并通过先进的数据分析功能(如甘油三酯水平和体重指数之间的相关性)深入了解了患者的情况。结论Diabetology.co.in 在为新诊断的 2 型糖尿病患者生成精确的个性化治疗建议方面表现出很高的效率。它与实际临床处方密切相关,展示了其在减少过度处方和促进循证糖尿病护理方面的潜力。
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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
109
审稿时长
6 months
期刊介绍: International Journal of Diabetes in Developing Countries is the official journal of Research Society for the Study of Diabetes in India. This is a peer reviewed journal and targets a readership consisting of clinicians, research workers, paramedical personnel, nutritionists and health care personnel working in the field of diabetes. Original research articles focusing on clinical and patient care issues including newer therapies and technologies as well as basic science issues in this field are considered for publication in the journal. Systematic reviews of interest to the above group of readers are also accepted.
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