High grade rearranged endometrial stromal sarcoma. A Bayesian analysis.
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Updated
Dec 21, 2020 - R
High grade rearranged endometrial stromal sarcoma. A Bayesian analysis.
This prototype seeks to alleviate the complexities by identifying pain points in the diagnostic journey and providing a user-friendly platform for managing animal data. This project incorporates machine learning models to enhance diagnostic accuracy, focusing on fungal diseases.
Workflow executa backup de dados e rotinas de manutenção do sistema.
A makeshift webserver exposing a prediction endpoint, written in R.
Data collected from the patients of Sylhet Diabetes Hospital, Bangladesh.
Python FastDiagP implementation
Enhancing diagnostic deep learning via self-supervised pretraining on large-scale, unlabeled non-medical images
Diagnose the presence of Breast Cancer with Python
JanSevak is a AI powered HealthCare Management System. The system allows users to register as patients, book appointments, and predict diseases based on symptoms. Doctors can view and manage appointments. Additionally, the system provides information on various health-related topics through blog posts.
Using a Gaussian Naive Bayes model to diagnose acute urinary inflammation and acute nephritises. Achieved a level of 90% and 95% diagnosing separately and nearly 100% with diagnosing together.
Exploring predictive K-Means Clustering, and Random Forest Classifiers in Breast Cancer diagnostics. I then work on "unboxing" the RFA to investigate feature contribution priorities - an important process in the pursuit of algorithm transparency, particularly in light of the ethical issues raised as industries shift towards complex neural algori…
PRWS.kr 자동 자가진단 시스템 소스(교육부 자가진단 대응)
Liver Disease prediction using binary classification such as SVM, ANN, or Random Forest. Generate missing data using the MICE algorithm. Use SMOTE to oversample minority class to reduce biases towards majority class. ROC analysis and k-fold Cross-validation Hypothesis tests were done. Data Source: UCI Machine Learning Repository
A set of Maven-based libraries for High-Performance Knowledge Based Configuration Techniques
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