Advancements in Real-Time Oncology Diagnosis: Harnessing AI and Image Fusion Techniques
- URL: http://arxiv.org/abs/2503.11332v1
- Date: Fri, 14 Mar 2025 12:00:22 GMT
- Title: Advancements in Real-Time Oncology Diagnosis: Harnessing AI and Image Fusion Techniques
- Authors: Leila Bagheriye, Johan Kwisthout,
- Abstract summary: Real-time computer-aided diagnosis using artificial intelligence (AI), with images, can help oncologists diagnose cancer with high accuracy and in an early phase.<n>This paper provides insights into the present and future potential of real-time imaging and image fusion.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Real-time computer-aided diagnosis using artificial intelligence (AI), with images, can help oncologists diagnose cancer with high accuracy and in an early phase. We reviewed real-time AI-based analyzed images for decision-making in different cancer types. This paper provides insights into the present and future potential of real-time imaging and image fusion. It explores various real-time techniques, encompassing technical solutions, AI-based imaging, and image fusion diagnosis across multiple anatomical areas, and electromagnetic needle tracking. To provide a thorough overview, this paper discusses ultrasound image fusion, real-time in vivo cancer diagnosis with different spectroscopic techniques, different real-time optical imaging-based cancer diagnosis techniques, elastography-based cancer diagnosis, cervical cancer detection using neuromorphic architectures, different fluorescence image-based cancer diagnosis techniques, and hyperspectral imaging-based cancer diagnosis. We close by offering a more futuristic overview to solve existing problems in real-time image-based cancer diagnosis.
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