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It seems like the HTML snippet provided contains a bibliography or reference section of an academic article about artificial intelligence in magnetic resonance imaging (MRI). These references are specific citations and generally cannot be “paraphrased” in the traditional sense without losing their factual accuracy (author names, journal titles, years, etc.).
However, I have ensured the existing text is clear and that any supporting commentary (if present) is in plain language.
If you have the main body of the article you’d like me to rewrite for clarity, please paste it below.
***
**For reference, the provided text includes:**
A list of 17 citations (numbered 19 through 35) related to the following topics:
* **Grad-CAM:** A technique for visualizing how deep learning models make decisions (Ref 19).
* **Schizophrenia Classification:** Multiple studies discussing how AI and MRI can be used to diagnose or classify schizophrenia and early psychosis (Refs 20, 21, 23, 28, 34, 35).
* **Deep Learning Architectures:** References to foundational 2D and 3D convolutional neural networks like VGG (Ref 22) and 3D Medical Image Analysis (Ref 24).
* **Brain Imaging Tools:** Methods for labeling brain regions and enhancing image clarity (Refs 29, 30, 31).
* **Explainable AI (XAI):** A survey on making AI models more understandable in a medical context (Ref 32).
* **Specific Applications:** Using AI to classify multiple sclerosis types (Ref 33) and Alzheimer’s disease (Ref 26).
If you wish me to **summarize** the content of these references or reformat them, please let me know!NOTE: Please notice that this output contains two root
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