The iToBoS 2024 workshop at VICOROB (UdG) showcased AI-driven breakthroughs in skin lesion detection with 3D total body photography, featuring a Kaggle competition, expert talks, and solutions from Team NinjaX.
This initiative aims to revolutionize early melanoma diagnosis via a high-resolution total body scanner and an integrated CAD tool, offering faster, patient-specific healthcare advancements.
On Monday, February 17, 2025,
VICOROB institute, University of Girona hosted an insightful workshop on iToBoS
2024 - Advancing Skin Lesion Detection with 3D-TBP as part of the
iToBoS 2024 initiative. This event focused on the ground breaking advancements
in Skin Lesion Detection with 3D Total Body Photography (3D-TBP)
and was attended by researchers, clinicians, and data science enthusiasts.
Distinguished Speakers
The workshop
featured esteemed experts in the field, including:
- Professor Rafael Garcia,
Director of VICOROB and the iToBoS Project, University of Girona
- Dr.
Josep Malvehy, Director of the Melanoma Unit at Hospital
Clinic of Barcelona (Challenge Director)
- Hayat Hussein Rajani,
VICOROB Research Team
- Solomon
Chibuzo Nwafor and Muhammad Faran Akram, winners from Team
NinjaX, who presented their winning solution
The iToBoS 2024 Skin Lesion Detection Competition,
hosted on Kaggle,
was a major component of the workshop. Participants developed state-of-the-art
machine learning techniques to detect multiple skin lesions from
anonymized 3D avatars generated using the Canfield VECTRA WB360 system. The
dataset included images from diverse populations, offering a robust foundation
for AI-driven dermatological research.
This workshop provided a valuable
learning opportunity for students from the Intelligent Field Robotic Systems (IFROS),
Master's in Intelligent Robotic Systems (MIRS), and
Medical Imaging and Applications (MAIA), who gained valuable
insights in AI applications beyond robotics, including healthcare and other
technological sectors. Many students from these programs participated
in the competition, expanding their expertise in artificial
intelligence, machine learning, and image processing. Notably, Team
NinjaX, the winning team, further
demonstrating the impact of AI-driven innovation and the
interdisciplinary applications of these cutting-edge techniques.
This achievement highlights
the strong AI foundation that the MIRS Master's provides, enabling students to
develop solutions that impact multiple domains beyond robotics.
Participants were encouraged to
publish their findings on arXiv and open-source their code to
contribute to future advancements in AI-driven dermatology.
Revolutionizing Skin Cancer Diagnosis with AI
Melanoma, responsible
for 60% of lethal skin neoplasia, is one of the most
aggressive cancers, with its incidence steadily rising. Early detection is
crucial, but conventional total body skin examinations are
time-consuming, especially for patients with numerous pigmented lesions.
The iToBoS
(Intelligent Total Body Scanner for Early Detection of Melanoma) project
is developing an AI-powered diagnostic platform to enhance
early melanoma detection. This platform integrates a total body scanner
and a Computer-Aided Diagnostics (CAD) tool capable of
combining medical records, genomics data, and imaging for a highly
personalized diagnosis.
The next-generation total
body scanner, based on an existing prototype, will utilize high-resolution
cameras with liquid lenses to achieve unparalleled image
quality. Combining these images with machine learning
algorithms, the system will serve as a new dermoscopic
diagnostic tool, ensuring fast, reliable, and patient-specific
diagnostics.