Artificial Intelligence in Dermatopathology: New Insights and Perspectives
Abstract
:1. Introduction
2. Materials and Methods
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Authors | Years | Type of AI | Results | Strengths | Limits |
---|---|---|---|---|---|
Potter et al. [16] | 1987 | Interactive computer program | Concordance, 91.8% Disagreement, 4.8% | Concordance and possibility of integration with patient clinical data | Disagreement and little memory space |
Crowlet R. et al. [17] | 2003 | Traditional intelligent tutoring system | Possibility of learning rather easily | Positive feedback | Clear prototypical schemes are indispensable |
Joset Feit et al. [18] | 2005 | Hypertext atlas of dermatopathology | A collection of about 3200 dermatopathological images | Continuous updating | / |
Payne et al. [19] | 2009 | Intelligent tutoring system | Tutoring made it possible to implement the training of learners | Ability to learn from mistakes | Greater difficulties in tutoring related to superficial perivascular dermatitis |
Olsen et al. [20] | 2018 | Deep learning algorithms | The artificial intelligence system accurately classified 123/124 (99.45%) BCCs (nodular), 113/114 (99.4%) dermal nevi and 123/123 (100%) seborrheic keratoses | Concordance | Difficulty in presenting artifacts, poor coloring |
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Cazzato, G.; Colagrande, A.; Cimmino, A.; Arezzo, F.; Loizzi, V.; Caporusso, C.; Marangio, M.; Foti, C.; Romita, P.; Lospalluti, L.; et al. Artificial Intelligence in Dermatopathology: New Insights and Perspectives. Dermatopathology 2021, 8, 418-425. https://doi.org/10.3390/dermatopathology8030044
Cazzato G, Colagrande A, Cimmino A, Arezzo F, Loizzi V, Caporusso C, Marangio M, Foti C, Romita P, Lospalluti L, et al. Artificial Intelligence in Dermatopathology: New Insights and Perspectives. Dermatopathology. 2021; 8(3):418-425. https://doi.org/10.3390/dermatopathology8030044
Chicago/Turabian StyleCazzato, Gerardo, Anna Colagrande, Antonietta Cimmino, Francesca Arezzo, Vera Loizzi, Concetta Caporusso, Marco Marangio, Caterina Foti, Paolo Romita, Lucia Lospalluti, and et al. 2021. "Artificial Intelligence in Dermatopathology: New Insights and Perspectives" Dermatopathology 8, no. 3: 418-425. https://doi.org/10.3390/dermatopathology8030044