Deep Transfer Learning for Kidney Cancer Diagnosis
Yassine Habchi, Hamza Kheddar, Yassine Himeur, Mohamed Chahine Ghanem, Abdelkrim Boukabou, Shadi Atalla, Wathiq Mansoor, Hussain Al-Ahmad

TL;DR
This paper reviews how deep transfer learning enhances kidney cancer diagnosis by improving accuracy and reducing computational needs, addressing data scarcity issues in medical imaging.
Contribution
It provides a comprehensive survey of deep transfer learning methods applied to kidney cancer detection, highlighting their advantages, limitations, and future research directions.
Findings
Transfer learning improves diagnostic accuracy in kidney cancer detection.
TL reduces computational demands for medical imaging models.
Emerging trends in TL can further advance personalized medicine.
Abstract
Incurable diseases continue to pose major challenges to global healthcare systems, with their prevalence shaped by lifestyle, economic, social, and genetic factors. Among these, kidney disease remains a critical global health issue, requiring ongoing research to improve early diagnosis and treatment. In recent years, deep learning (DL) has shown promise in medical imaging and diagnostics, driving significant progress in automatic kidney cancer (KC) detection. However, the success of DL models depends heavily on the availability of high-quality, domain-specific datasets, which are often limited and expensive to acquire. Moreover, DL models demand substantial computational power and storage, restricting their real-world clinical use. To overcome these barriers, transfer learning (TL) has emerged as an effective approach, enabling the reuse of pre-trained models from related domains to…
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Taxonomy
TopicsAI in cancer detection · Brain Tumor Detection and Classification · Artificial Intelligence in Healthcare
