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Deep learning techniques, particularly convolutional neural networks (CNNs), are extensively used for malaria cell image classification.
By training on a large dataset of labeled cell images, these models can automatically learn and extract intricate features that distinguish infected cells from healthy ones.
This automated approach enhances the accuracy and speed of malaria diagnosis, reducing the reliance on manual microscopy and enabling timely and effective treatment, especially in resource-limited settings.
One practical use case of malaria cell image classification using deep learning is in remote and resource-limited healthcare settings. In these areas, access to skilled microscopists for diagnosing malaria is often limited. By deploying a deep learning-based mobile or desktop application, healthcare workers can capture images of blood smears using a microscope attached to a smartphone.
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@TAHIR0110 , @Avdhesh-Varshney could you please assign me this issue under GSSOC'24
Use Case
One practical use case of malaria cell image classification using deep learning is in remote and resource-limited healthcare settings. In these areas, access to skilled microscopists for diagnosing malaria is often limited. By deploying a deep learning-based mobile or desktop application, healthcare workers can capture images of blood smears using a microscope attached to a smartphone.
Benefits
No response
Add ScreenShots
No response
Priority
High
Record
The text was updated successfully, but these errors were encountered: