QML Powered Interface for Diffusion Imaging

Author:

Rupali Jadhav ,Ajay Jadhav ,Vinay Ghate ,Gitesh Mahadik ,Praneeth Shetty

Abstract

In the field of medical imaging, Diffusion Imaging (DI) has emerged as a powerful technique for investigating the microstructural properties of biological tissues. However, the complexity of DI analysis software often poses a significant barrier to its widespread adoption, as it typically requires proficiency in Python programming and command-line interactions. This technical barrier can limit the accessibility of DI technology to individuals without extensive technical expertise, hindering its potential impact in various medical and research applications To address this challenge, we propose a novel solution that leverages the capabilities of Query Markup Language (QML) to develop a user-friendly interface for Diffusion Imaging. By combining the power of Python technology, which forms the core of DI analysis, with the intuitive interface design capabilities of QML, our project aims to democratize DI analysis and make it accessible to a broader audience, including medical professionals, researchers, and students. Our research focuses on bridging the gap between the technical complexities of DI analysis and user accessibility. The proposed QML-powered interface will feature modern UI elements with fluid animations, ensuring a seamless and engaging user experience. Crucially, it will abstract away the intricacies of Python programming and command-line interactions, allowing users to concentrate on the analysis and interpretation of DI data without the burden of technical hurdles.

Publisher

Technoscience Academy

Reference17 articles.

1. Salma Salhi, Youssef Kora, Gisu Ham, Hadi Zadeh Haghighi, Christoph Simon. (2023). "Network analysis of the human structural connectome including the brainstem." PLOS ONE.

2. Naila Rahman, Jake Hamilton, Kathy Xu, Arthur Brown, Corey A. Baron. (2017). "Tensor -valued and frequency-dependent diffusion MRI and magnetization transfer saturation MRI evolution during adult mouse brain maturation." ARXIV.

3. Yaochen Xie, Ziqian Xie, Sheikh Muhammad Saiful Islam, Degui Zhi, Shuiwang Ji. (2023). "Genetic InfoMax: Exploring Mutual Information Maximization in High-Dimensional Imaging Genetics Studies." NCBI.

4. Bingyu Xin, Meng Ye, Leon Axel, Dimitris N. Metaxas. (2023). "Fill the K-Space and Refine the Image: Prompting for Dynamic and Multi-Contrast MRI Reconstruction." Research Gate.

5. Dream the Impossible: Outlier Imagination with Diffusion Models (2023). UW Madison.

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