Gestational Diabetes Dataset

Gestational Diabetes Dataset

Datasets

Gestational Diabetes Dataset

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Gestational Diabetes Dataset

Use Case

Gestational Diabetes Dataset

Description

Access the Gestational Diabetes Dataset, featuring comprehensive healthcare data from the Kurdistan region, designed for AI-driven predictive models.

Description:

Gestational diabetes mellitus (GDM) is a form of diabetes that occurs during pregnancy when blood sugar levels become elevated. This condition can arise at any stage of pregnancy and poses potential health risks for both the mother and the baby, including complications during childbirth, high birth weight, premature birth, and the potential for developing type 2 diabetes later in life. Early detection and proper management are essential to mitigate these risks, especially in regions where pregnant women undergo only periodic medical tests.

The increasing role of artificial intelligence (AI) and machine learning in healthcare is driving new advancements in predictive diagnostics. This dataset supports the development of intelligent systems that use machine learning algorithms to predict gestational diabetes, contributing to the early diagnosis and management of this condition. By applying data-driven models to patient data, healthcare providers can better anticipate and address the complications associated with gestational diabetes, ultimately improving outcomes for both mothers and their babies.

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Data Collection

This dataset originates from the Kurdistan region laboratories and was compiled through the careful collection of clinical data from pregnant women, both with and without a gestational diabetes diagnosis. The data includes a wide range of features such as demographic information, blood glucose levels, medical history, BMI, and other relevant health indicators that may be used to train predictive models. By capturing diverse factors influencing gestational diabetes, this dataset provides a comprehensive foundation for creating highly accurate predictive tools.

Features of the Dataset

The dataset contains the following attributes:

  • Age: Age of the pregnant women at the time of data collection.
  • BMI: Body Mass Index (BMI), an important measure often linked to gestational diabetes risk.
  • Blood Glucose Levels: Fasting and postprandial blood glucose readings.
  • Blood Pressure: Both systolic and diastolic blood pressure measurements.
  • Family History of Diabetes: Information on any family history of diabetes, which can increase the risk.
  • Previous Pregnancies: Data on previous pregnancies and any complications encountered.
  • Diet and Lifestyle Factors: Information on dietary habits, physical activity, and other lifestyle factors that may influence gestational diabetes risk.

Use Case

This dataset is valuable for research and development of predictive models focused on:

  • Early detection of gestational diabetes: By analyzing trends and patterns in the data, AI models can be developed to predict the likelihood of a pregnant woman developing gestational diabetes.
  • Healthcare intervention planning: Predictions can help healthcare providers tailor personalized treatment plans for pregnant women to manage their blood sugar levels effectively and reduce complications.
  • Public health insights: The dataset can also aid in understanding broader trends in gestational diabetes prevalence in the Kurdistan region, helping inform regional healthcare policies and resource allocation.

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