Differentiated Thyroid Cancer Recurrence Dataset
Differentiated Thyroid Cancer Recurrence Dataset
Datasets
Differentiated Thyroid Cancer Recurrence Dataset
File
Differentiated Thyroid Cancer Recurrence Dataset
Use Case
Differentiated Thyroid Cancer Recurrence Dataset
Description
Access the Differentiated Thyroid Cancer Recurrence Dataset, featuring 13 clinicopathologic features collected over 15 years.
Description:
The Differentiated Thyroid Cancer Recurrence Dataset includes 13 clinicopathologic features collected over 15 years, aimed at predicting the recurrence of well-differentiated thyroid cancer. With a minimum 10-year follow-up for each patient, this dataset supports machine learning applications for risk stratification and personalized treatment strategies in thyroid cancer care.
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The Differentiated Thyroid Cancer Recurrence Dataset is a comprehensive collection of 13 clinicopathologic features aimed at predicting the recurrence of well-differentiated thyroid cancer. Data was meticulously gathered over a 15-year period, with each patient monitored for a minimum of 10 years. This extensive dataset serves as a valuable resource for researchers and healthcare professionals focusing on predictive analytics and personalized treatment approaches in oncology.
Dataset Details:
Purpose: Developed as part of research in the intersection of artificial intelligence and medicine, this dataset facilitates the training of machine learning models to predict the likelihood of recurrence in well-differentiated thyroid cancer patients.
Funding: The creation of this dataset was not funded by any external organization.
Instances Represent: Each instance corresponds to an individual patient diagnosed with well-differentiated thyroid cancer.
Data Splits: The dataset does not include predefined data splits; users are encouraged to partition the data as per their research requirements.
Sensitive Data: The dataset does not contain sensitive information, ensuring compliance with privacy standards.
Missing Values: The dataset is complete, with no missing values reported.
Key Features:
The dataset encompasses 13 clinicopathologic features, including:
Age
Gender
Tumor Size
Lymph Node Involvement
Extrathyroidal Extension
Vascular Invasion
Histological Subtype
Surgical Margin Status
Radioactive Iodine Therapy
Follow-Up Duration
Recurrence Status
These features are critical for assessing the risk of recurrence and tailoring individualized treatment plans.
Usage and Applications:
Researchers and clinicians can utilize this dataset to:
Develop Predictive Models: Train machine learning algorithms to forecast the likelihood of cancer recurrence, enhancing early detection and intervention strategies.
Risk Stratification: Identify high-risk patients who may benefit from more aggressive treatment or closer monitoring.
Personalized Medicine: Inform treatment decisions based on individual patient profiles, leading to improved outcomes.
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