Imaging assessment of osteosarcoma chemotherapy efficacy based on multi-scale lesion attention network

ZANG Jie SONG Ze-qun TANG Zhen-yu HE Fang-zhou DING Chao-wei WANG Ling-feng TANG Xiao-dong

Acta Anatomica Sinica ›› 2025, Vol. 56 ›› Issue (1) : 30-36.

PDF(1941 KB)
Welcome to visit Acta Anatomica Sinica! Today is Chinese
PDF(1941 KB)
Acta Anatomica Sinica ›› 2025, Vol. 56 ›› Issue (1) : 30-36. DOI: 10.16098/j.issn.0529-1356.2025.01.004

Imaging assessment of osteosarcoma chemotherapy efficacy based on multi-scale lesion attention network

  • ZANG Jie1  SONG Ze-qun2  TANG Zhen-yu HE Fang-zhou DING Chao-wei1  WANG Ling-feng2* TANG Xiao-dong1*
Author information +
History +

Abstract

Objective To propose a high-precision deep learning-based image assessment method  of osteosarcoma chemotherapy efficacy for clinical treatment, as existing methos have low accuracy of osteosarcoma assessment.   Methods The low incidence of osteosarcoma led to the small scale of its imaging data and the problem of imbalance in data categories. This study combined deep learning with clinical medical information, combined the bone sarcoma generation module of BoneGAN and the scale lesion information capture module, and proposed OMLA-Net, a deep learning assessment network for chemotherapy effect of bone sarcoma based on multi-scale lesion attention network, which achieved computer-aided bone tumor assessment with integrated data augmentation and focused lesion information through pre-training and generalized loss training. Results  In this study, 40 cases of osteosarcoma MRI data were used as the basis for the comparison test on the generated dataset, and the OMLA-Net assessment outperformed the SOTA method  Conv-LSTM-GAN in terms of the assessment effects such as accuracy and F1 scores, and the difference was statistically significant (P<0.05); the subsequent K-fold cross-validation ablation experiments further demonstrated the effectiveness of each module proposed by OMLA-Net.   Conclusion   OMLA-Net can effectively perform the impact assessment of chemotherapy effect on osteosarcoma, which provides a new idea for subsequent clinical application.

Key words

Osteosarcoma / Chemotherapy assessment / Clinical application / Multiscale lesion attention 


Cite this article

Download Citations
ZANG Jie SONG Ze-qun TANG Zhen-yu HE Fang-zhou DING Chao-wei WANG Ling-feng TANG Xiao-dong. Imaging assessment of osteosarcoma chemotherapy efficacy based on multi-scale lesion attention network[J]. Acta Anatomica Sinica. 2025, 56(1): 30-36 https://doi.org/10.16098/j.issn.0529-1356.2025.01.004

References

[1]Guerrero-Pérez F, Pia Marengo A, Vidal N, et al. Primary tumors of the posterior pituitary: a systematic review[J]. Rev Endocr Metab Disord, 2019, 20(2): 219-238.
[2]Hu Z, Li Z, Ma Z, et al. Multi-cancer analysis of clonality and the timing of systemic spread in paired primary tumors and metastases[J]. Nat Genet, 2020, 52(7):701-708.
[3]Coleman RE, Guise TA, Lipton A, et al. Advancing treatment for metastatic bone cancer: consensus recommendations from the second cambridge conference[J]. Clin Cancer Res, 2008, 14(20): 6387-6395.
[4]Morello E, Martano M, Buracco P. Biology, diagnosis and treatment of canine appendicular osteosarcoma: similarities and differences with human osteosarcoma[J]. Vet J, 2011, 189(3):268-277.
[5]Dorfman HD, Czerniak B. Bone cancers[J]. Cancer, 1995, 75(Suppl): 203-210.
[6]Ottaviani G, Jaffe N. The epidemiology of osteosarcoma[J]. Cancer Treat Res, 2009,152:3-13.
[7]Ahmed, M Seraj R, Shamsul Islam SM. The k-means algorithm: a comprehensive survey and performance evaluation[J]. Electronics, 2020, 9(8): 1295.
[8]Chandra, MA,Bedi SS. Survey on SVM and their application in image classification[J]. Int J Inf Technol, 2021,13(5): 1-11.
[9]Kuang D, Michoski C. SEER-net: simple EEG-based recognition network[J]. Biomed Signal Process Control, 2023, 83: 104620.
[10]Qin X, Xu D, Dong X, et al. EEG signal classification based on improved variational mode decomposition and deep forest[J]. Biomed Signal Process Control, 2023, 83: 104644.
[11]Zhang H, Song R, Wang L, et al. Classification of brain disorders in rs-fMRI via local-to-global graph neural networks[J]. IEEE Trans Med Imaging, 2023, 42(2): 444-455.
[12]Mei J, Cheng MM, Xu G, et al. SANet: a slice-aware network for pulmonary nodule detection[J]. IEEE Trans Pattern Anal Mach Intell, 2022, 44(8): 4374-4387.
[13]Zhao D, Liu Y, Yin H, et al. An attentive and adaptive 3D CNN for automatic pulmonary nodule detection in CT image[J]. Expert Syst Appl, 2023,211: 118672.
[14]Yi L, Zhang L, Xu X, et al. Multi-label softmax networks for pulmonary nodule classification using unbalanced and dependent categories[J]. IEEE Trans Med Imaging, 2023, 42(1): 317-328.
[15]Liu Z, Xiong R, Jiang T. CI-net: clinical-inspired network for automated skin lesion recognition[J]. IEEE Trans Med Imaging, 2023,42(3): 619-632.
[16]Abdar M, Samami M, Mahmoodaba SD, et al. Uncertainty quantification in skin cancer classification using three-way decision-based Bayesian deep learning[J]. Comput Biol Med, 2021, 135: 104418.
[17]Balaha HM, Hassan A. Skin cancer diagnosis based on deep transfer learning and sparrow search algorithm[J]. Neural Comput Appl, 2023,35(1): 815-853.
[18]Xu Z, Niu K, Tang S, et al. Bone tumor necrosis rate detection in few-shot x-rays based on deep learning[J]. Comput Med Imaging Graph, 2022,102: 102141.
[19]Xue S, Liu Z, Chen F, et al. Accelerating diffusion sampling with optimized time steps[J]. Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit, 2024: 8292-8301.
[20]Graikos A, Yellapragada S, Le MQ, et al. Learned representation-guided diffusion models for large-image generation[J]. Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit, 2024: 8532-8542.
[21]Zhan, C, Lin, Y, Wang, G, et al. MedM2G: unifying medical multi-modal generation via cross-guided diffusion with visual invariant[J]. Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit, 2024: 11502-11512.

PDF(1941 KB)

Accesses

Citation

Detail

Sections
Recommended

/