A robust model training strategy using hard negative mining in a weakly labeled dataset for lymphatic invasion in gastric cancer

Abstract Gastric cancer is a significant public health concern, emphasizing the need for accurate evaluation of lymphatic invasion (LI) for determining prognosis and treatment options. However, this task is time‐consuming, labor‐intensive, and prone to intra‐ and interobserver variability. Furthermo...

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Main Authors: Jonghyun Lee (Author), Sangjeong Ahn (Author), Hyun‐Soo Kim (Author), Jungsuk An (Author), Jongmin Sim (Author)
Format: Book
Published: Wiley, 2024-01-01T00:00:00Z.
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042 |a dc 
100 1 0 |a Jonghyun Lee  |e author 
700 1 0 |a Sangjeong Ahn  |e author 
700 1 0 |a Hyun‐Soo Kim  |e author 
700 1 0 |a Jungsuk An  |e author 
700 1 0 |a Jongmin Sim  |e author 
245 0 0 |a A robust model training strategy using hard negative mining in a weakly labeled dataset for lymphatic invasion in gastric cancer 
260 |b Wiley,   |c 2024-01-01T00:00:00Z. 
500 |a 2056-4538 
500 |a 10.1002/cjp2.355 
520 |a Abstract Gastric cancer is a significant public health concern, emphasizing the need for accurate evaluation of lymphatic invasion (LI) for determining prognosis and treatment options. However, this task is time‐consuming, labor‐intensive, and prone to intra‐ and interobserver variability. Furthermore, the scarcity of annotated data presents a challenge, particularly in the field of digital pathology. Therefore, there is a demand for an accurate and objective method to detect LI using a small dataset, benefiting pathologists. In this study, we trained convolutional neural networks to classify LI using a four‐step training process: (1) weak model training, (2) identification of false positives, (3) hard negative mining in a weakly labeled dataset, and (4) strong model training. To overcome the lack of annotated datasets, we applied a hard negative mining approach in a weakly labeled dataset, which contained only final diagnostic information, resembling the typical data found in hospital databases, and improved classification performance. Ablation studies were performed to simulate the lack of datasets and severely unbalanced datasets, further confirming the effectiveness of our proposed approach. Notably, our results demonstrated that, despite the small number of annotated datasets, efficient training was achievable, with the potential to extend to other image classification approaches used in medicine. 
546 |a EN 
690 |a artificial intelligence 
690 |a computational pathology 
690 |a gastric cancer 
690 |a lymphatic invasion 
690 |a hard negative mining 
690 |a Pathology 
690 |a RB1-214 
655 7 |a article  |2 local 
786 0 |n The Journal of Pathology: Clinical Research, Vol 10, Iss 1, Pp n/a-n/a (2024) 
787 0 |n https://doi.org/10.1002/cjp2.355 
787 0 |n https://doaj.org/toc/2056-4538 
856 4 1 |u https://doaj.org/article/f65d3d632dbe4075b35795d2b41f12a9  |z Connect to this object online.