AI-based Predictive Analytics

To Automatically Identify

2型糖尿病患者

我们的旅程

开球
Challenge
Identifying patients with Type 2 Diabetes Mellitus.
Analysis
Creating a customized system layout to simplify AI-based Diabetes Prediction.
Solution
基于AI的糖尿病II型预测软件解决方案。
Result
2型糖尿病患者的准确风险计算。
迭代
& Support

我们的旅程

1

Challenge

Understanding Problems to Lead Change

Over 25 million people or around 8.3% of the entire United States population suffers from diabetes.

Diabetes is also linked with a broad range of complexities from heart disease and stroke to blindness and kidney disease.

Many people with diabetes are diagnosed late and develop Type 2 diabetes.

为了更好地了解糖尿病患者所遭受的这些并发症,预测2型糖尿病患者是必要的。

With the rise of Artificial Intelligence-based approaches, we can find a solution to this issue. The core challenge is to develop an advanced software system using AI which can predict whether the patient has Type 2 diabetes or not. The AI can extract hidden knowledge from a vast amount of diabetes-related data and help identify the diabetes type 2 patients in early stages.

    DISCUSS YOUR PROJECT
    2

    Analysis

    Defining the Solid Roadmap

    The goal was to create a proprietary AI-based platform that predicts an individual’s risk for developing Metabolic Syndrome related diseases such as type 2 diabetes.

    The system was based on personal, medical, diagnosis and medication data collected by a patient.

    After brainstorming with the client, OSP proposed a comprehensive system which will be handled by the healthcare providers to collect, note, and store this data to help predict the pattern.

    OSP engineered a brilliant system architecture to view all the required datasets with their current status easily. Our finalized conceptual system design included in-depth AI architecture diagrams, report layouts, and the screen designs. We have created an intelligent roadmap to leverage the random forest algorithm consisting of 2000 trees on the diabetes datasets.

      DISCUSS YOUR PROJECT
      3

      Solution

      兑现承诺

      Data collection and storage was the crucial part of this system to work. We simplified the data sets into four major components.

      Personal data include age, sex, height and weight, whereas the lab data consists of the body measurements and data gathered from a few basic medical tests.

      根据HL7文本,实验室数据包括患者的BMI,呼吸率,心率,温度,收缩压和舒张压。我们使用了收集数据的中位数。

      提供者可以使用高级仪表板为每个患者使用自动化的ICD-9编码添加诊断描述。

      The system also included the prescribed medication for each patient for their respective diagnosis. The EMR data with complete historical data of patients were applied with random forest algorithm and log loss metric to derive the approximate possibility of a patient suffering from diabetes or not. The AI-based predictive analytics solution has the potential to identify the patients that are currently suffering from Type 2 Diabetes Mellitus.

        DISCUSS YOUR PROJECT
        4

        Result

        Building to Deliver Experiences

        This AI-based predictive analytics offers risk stratification that is critical for early intervention and cost-effective resource allocation by healthcare providers and payers.

        该系统使人们能够专注于慢性疾病(如糖尿病)2型的慢性疾病风险最高的人。

        People with 95%+ accuracy are already suffering with the Diabetes Type 2, whereas the people with 60% accuracy may have a chance to get diabetes in near future.

        构建随机森林算法的随机性有助于考虑许多可能的解释,与具有自动化功能的单个树相比,它可以捕获数据的更广泛图景。

        The AI-driven diabetes predictive analytics uses electronic medical record data to enhance public health by predicting the patients suffering from diabetes type 2 from a dataset of de-identified medical records. We have proved that the AI-based MVP has the potential to transform the diabetes risk prediction using advanced computational methods and algorithms. The random forest gives us a better accuracy than the logistic regression model or a single decision tree, without tuning any parameters. OSP simplified the most challenging task of identifying the patients with diabetes that were going unnoticed and help clinicians to make a better decision about the disease status.

          DISCUSS YOUR PROJECT

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