IDT: An incremental deep tree framework for biological image classification

Nowadays, breast and cervical cancers are respectively the first and fourth most common causes of cancer death in females. It is believed that, automated systems based on artificial intelligence would allow the early diagnostic which increases significantly the chances of proper treatment and surviv...

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Veröffentlicht in:Artificial intelligence in medicine 2022-12, Vol.134, p.102392-102392, Article 102392
Hauptverfasser: Mousser, Wafa, Ouadfel, Salima, Taleb-Ahmed, Abdelmalik, Kitouni, Ilham
Format: Artikel
Sprache:eng
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Zusammenfassung:Nowadays, breast and cervical cancers are respectively the first and fourth most common causes of cancer death in females. It is believed that, automated systems based on artificial intelligence would allow the early diagnostic which increases significantly the chances of proper treatment and survival. Although Convolutional Neural Networks (CNNs) have achieved human-level performance in object classification tasks, the regular growing of the amount of medical data and the continuous increase of the number of classes make them difficult to learn new tasks without being re-trained from scratch. Nevertheless, fine tuning and transfer learning in deep models are techniques that lead to the well-known catastrophic forgetting problem. In this paper, an Incremental Deep Tree (IDT) framework for biological image classification is proposed to address the catastrophic forgetting of CNNs allowing them to learn new classes while maintaining acceptable accuracies on the previously learnt ones. To evaluate the performance of our approach, the IDT framework is compared against with three popular incremental methods, namely iCaRL, LwF and SupportNet. The experimental results on MNIST dataset achieved 87 % of accuracy and the obtained values on the BreakHis, the LBC and the SIPaKMeD datasets are promising with 92 %, 98 % and 93 % respectively. •A new framework to incrementally learn deep models for breast and cervical cancers image classification•Do not rely on all previously learnt databases and learn new classes while maintaining acceptable accuracies on old ones.•Promising experimental results to mitigate catastrophic forgetting of incremental deep models in medicine
ISSN:0933-3657
1873-2860
DOI:10.1016/j.artmed.2022.102392