TY - ECHAP KW - Teledermatology KW - Telemedicine KW - Dataset KW - Sub-Saharan Africa AU - Gottfrois P AU - Gröger F AU - Andriambololoniaina FH AU - Amruthalingam L AU - Gonzalez-Jimenez A AU - Hsu C AU - Kessy A AU - Lionetti S AU - Mavura D AU - Ng’ambi W AU - Ngongonda DF AU - Pouly M AU - Rakotoarisaona MF AU - Rapelanoro Rabenja F AU - Traoré I AU - Navarini AA AB -

Africa faces a huge shortage of dermatologists, with less than one per million people. This is in stark contrast to the high demand for dermatologic care, with 80% of the paediatric population suffering from largely untreated skin conditions. The integration of AI into healthcare sparks significant hope for treatment accessibility, especially through the development of AI-supported teledermatology. Current AI models are predominantly trained on white-skinned patients and do not generalize well enough to pigmented patients. The PASSION project aims to address this issue by collecting images of skin diseases in Sub-Saharan countries with the aim of open-sourcing this data. This dataset is the first of its kind, consisting of 1,653 patients for a total of 4,901 images. The images are representative of telemedicine settings and encompass the most common paediatric conditions: eczema, fungals, scabies, and impetigo. We also provide a baseline machine learning model trained on the dataset and a detailed performance analysis for the subpopulations represented in the dataset. The project website can be found at https://passionderm.github.io/.

BT - Lecture Notes in Computer Science DO - 10.1007/978-3-031-72384-1_66 LA - ENG M3 - Book Chapter N2 -

Africa faces a huge shortage of dermatologists, with less than one per million people. This is in stark contrast to the high demand for dermatologic care, with 80% of the paediatric population suffering from largely untreated skin conditions. The integration of AI into healthcare sparks significant hope for treatment accessibility, especially through the development of AI-supported teledermatology. Current AI models are predominantly trained on white-skinned patients and do not generalize well enough to pigmented patients. The PASSION project aims to address this issue by collecting images of skin diseases in Sub-Saharan countries with the aim of open-sourcing this data. This dataset is the first of its kind, consisting of 1,653 patients for a total of 4,901 images. The images are representative of telemedicine settings and encompass the most common paediatric conditions: eczema, fungals, scabies, and impetigo. We also provide a baseline machine learning model trained on the dataset and a detailed performance analysis for the subpopulations represented in the dataset. The project website can be found at https://passionderm.github.io/.

PB - Springer Nature Switzerland PY - 2024 SN - 9783031723834/0302-9743, 1611-3349 SP - 703 EP - 712 T2 - Lecture Notes in Computer Science TI - PASSION for Dermatology: Bridging the Diversity Gap with Pigmented Skin Images from Sub-Saharan Africa UR - https://papers.miccai.org/miccai-2024/paper/3722_paper.pdf ER -