Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition

Akay JM, Schenck W (2024)
In: Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII. Lecture Notes in Computer Science, 15023. Cham: Springer : 427-444.

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Autor*in
Akay, Julien Marteen; Schenck, WolframUniBi
Abstract / Bemerkung
Chronic wounds pose significant challenges in medical practice, necessitating effective treatment approaches and reduced burden on healthcare staff. Computer-aided diagnosis (CAD) systems offer promising solutions to enhance treatment outcomes. However, the effective processing of wound images remains a challenge. Deep learning models, particularly convolutional neural networks (CNNs), have demonstrated proficiency in this task, typically relying on extensive labeled data for optimal generalization. Given the limited availability of medical images, a common approach involves pretraining models on data-rich tasks to transfer that knowledge as a prior to the main task, compensating for the lack of labeled wound images. In this study, we investigate the transferability of CNNs pretrained with non-contrastive self-supervised learning (SSL) to enhance generalization in chronic wound image recognition. Our findings indicate that leveraging non-contrastive SSL methods in conjunction with ConvNeXt models yields superior performance compared to other work's multimodal models that additionally benefit from affected body part location data. Furthermore, analysis using Grad-CAM reveals that ConvNeXt models pretrained with VICRegL exhibit improved focus on relevant wound properties compared to the conventional approach of ResNet-50 models pretrained with ImageNet classification. These results underscore the crucial role of the appropriate combination of pretraining method and model architecture in effectively addressing limited wound data settings. Among the various approaches explored, ConvNeXt-XL pretrained by VICRegL emerges as a reliable and stable method. This study makes a novel contribution by demonstrating the effectiveness of latest non-contrastive SSL-based transfer learning in advancing the field of chronic wound image recognition.
Stichworte
Non-contrastive self-supervised learning; Convolutional neural networks; Deep learning; Transfer learning; Fine-tuning; Wound image recognition
Erscheinungsjahr
2024
Titel des Konferenzbandes
Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII
Serien- oder Zeitschriftentitel
Lecture Notes in Computer Science
Band
15023
Seite(n)
427-444
Konferenz
33rd International Conference on Artificial Neural Networks and Machine Learning (ICANN)
Konferenzort
Lugano, Switzerland
Konferenzdatum
2024-09-17 – 2024-09-20
ISBN
978-3-031-72352-0, 978-3-031-72353-7
ISSN
0302-9743
eISSN
1611-3349
Page URI
https://pub.uni-bielefeld.de/record/2994598

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Akay JM, Schenck W. Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition. In: Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII. Lecture Notes in Computer Science. Vol 15023. Cham: Springer ; 2024: 427-444.
Akay, J. M., & Schenck, W. (2024). Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition. Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII, Lecture Notes in Computer Science, 15023, 427-444. Cham: Springer . https://doi.org/10.1007/978-3-031-72353-7_31
Akay, Julien Marteen, and Schenck, Wolfram. 2024. “Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition”. In Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII, 15023:427-444. Lecture Notes in Computer Science. Cham: Springer .
Akay, J. M., and Schenck, W. (2024). “Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition” in Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII Lecture Notes in Computer Science, vol. 15023, (Cham: Springer ), 427-444.
Akay, J.M., & Schenck, W., 2024. Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition. In Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII. Lecture Notes in Computer Science. no.15023 Cham: Springer , pp. 427-444.
J.M. Akay and W. Schenck, “Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition”, Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII, Lecture Notes in Computer Science, vol. 15023, Cham: Springer , 2024, pp.427-444.
Akay, J.M., Schenck, W.: Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition. Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII. Lecture Notes in Computer Science. 15023, p. 427-444. Springer , Cham (2024).
Akay, Julien Marteen, and Schenck, Wolfram. “Transferability of Non-contrastive Self-supervised Learning to Chronic Wound Image Recognition”. Artificial Neural Networks and Machine Learning – ICANN 2024, PT VIII. Cham: Springer , 2024.Vol. 15023. Lecture Notes in Computer Science. 427-444.