Bone metastasis scintigram generation using generative adversarial learning with multi‐receptive field learning and two‐stage training

Author:

Lin Qiang123,Xie An23,Zeng Xianwu4,Cao Yongchun123,Man Zhengxing123,Hao Yusheng123,Liu Caihong123,Huang Xiaodi5

Affiliation:

1. School of Mathematics and Computer Science Northwest Minzu University Lanzhou China

2. Key Laboratory of China's Ethnic Languages and Information Technology of Ministry of Education Northwest Minzu University Lanzhou China

3. Key Laboratory of Computational Nuclear Medicine Northwest Minzu University Lanzhou China

4. Department of Nuclear Medicine Gansu Provincial Cancer Hospital Lanzhou China

5. School of Computing Mathematics and Engineering Charles Sturt University Albury Australia

Abstract

AbstractBackgroundDeep learning is the primary method for conducting automated analysis of SPECT bone scintigrams. The lack of available large‐scale data significantly hinders the development of well‐performing deep learning models, as the performance of a deep learning model is positively correlated with the size of the dataset used. Therefore, there is an urgent demand for an automated data generation method to enlarge the dataset of SPECT bone scintigrams.PurposeWe introduce a deep learning‐based generation model that can generate realistic but not identical samples from the original SPECT bone scintigrams.MethodsFollowing the generative adversarial learning architecture, a bone metastasis scintigram generation model christened BMS‐Gen is proposed. First, BMS‐Gen takes multiple input conditions and employs multi‐receptive field learning to ensure that the generated samples are as realistic as possible. Second, BMS‐Gen adopts generative adversarial learning to retain the diversity of the generated samples. Last, BMS‐Gen uses a two‐stage training strategy to improve the quality of the generated samples.ResultsExperimental evaluation conducted on a set of clinical data of SPECT BM scintigrams has shown the performance of the proposed BMS‐Gen, achieving the best overall scores of 1678.0, 69.33, and 19.51 for FID (Fréchet Inception Distance), MSE (Mean Square Error), and PSNR (Peak Signal‐to‐Noise Ratio) metrics. The introduction of samples generated by BMS‐Gen contributes a maximum (minimum) increase of 3.01% (0.15%) on the F‐1 score and a maximum (minimum) increase of 6.83% (2.21%) on the DSC score for the image classification and segmentation tasks, respectively.ConclusionsThe proposed BMS‐Gen model can be used as a promising tool for augmenting the data of bone scintigrams, greatly facilitating the development of deep learning‐based automated analysis of SPECT bone scintigrams.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Gansu Province

Fundamental Research Funds for the Central Universities

Publisher

Wiley

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