Adaptive machine learning method for photoacoustic computed tomography based on sparse array sensor data

Photoacoustic computed tomography (PACT) is a non-invasive biomedical imaging technology that has developed rapidly in recent decades, especially has shown potential for small animal studies and early diagnosis of human diseases. To obtain high-quality images, the photoacoustic imaging system needs...

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Vydané v:Computer methods and programs in biomedicine Ročník 242; s. 107822
Hlavní autori: Wang, Ruofan, Zhu, Jing, Meng, Yuqian, Wang, Xuanhao, Chen, Ruimin, Wang, Kaiyue, Li, Chiye, Shi, Junhui
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: Elsevier B.V 01.12.2023
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ISSN:0169-2607, 1872-7565, 1872-7565
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Shrnutí:Photoacoustic computed tomography (PACT) is a non-invasive biomedical imaging technology that has developed rapidly in recent decades, especially has shown potential for small animal studies and early diagnosis of human diseases. To obtain high-quality images, the photoacoustic imaging system needs a high-element-density detector array. However, in practical applications, due to the cost limitation, manufacturing technology, and the system requirement in miniaturization and robustness, it is challenging to achieve sufficient elements and high-quality reconstructed images, which may even suffer from artifacts. Different from the latest machine learning methods based on removing distortions and artifacts to recover high-quality images, this paper proposes an adaptive machine learning method to firstly predict and complement the photoacoustic sensor channel data from sparse array sampling and then reconstruct images through conventional reconstruction algorithms. We develop an adaptive machine learning method to predict and complement the photoacoustic sensor channel data. The model consists of XGBoost and a neural network named SS-net. To handle data sets of different sizes and improve the generalization, a tunable parameter is used to control the weights of XGBoost and SS-net outputs. The proposed method achieved superior performance as demonstrated by simulation, phantom experiments, and in vivo experiment results. Compared with linear interpolation, XGBoost, CAE, and U-net, the simulation results show that the SSIM value is increased by 12.83%, 6.78%, 21.46%, and 12.33%. Moreover, the median R2 is increased by 34.4%, 8.1%, 28.6%, and 84.1% with the in vivo data. This model provides a framework to predict the missed photoacoustic sensor data on a sparse ring-shaped array for PACT imaging and has achieved considerable improvements in reconstructing the objects. Compared with linear interpolation and other deep learning methods qualitatively and quantitatively, our proposed methods can effectively suppress artifacts and improve image quality. The advantage of our methods is that there is no need for preparing a large number of images as the training dataset, and the data for training is directly from the sensors. It has the potential to be applied to a wide range of photoacoustic imaging detector arrays for low-cost and user-friendly clinical applications. •The adaptive machine learning model (AMLM) improves photoacoustic image quality under sparse array sampling condition.•AMLM predicts and completes the sampling data and suppresses artifacts in the reconstructed photoacoustic images.•AMLM outperforms conventional linear interpolation and other deep learning methods in simulation and experiment.•AMLM only requires a small-scale dataset of the sensors and is easy to implement.•The proposed can be potentially applied to low-cost and user-friendly clinical photoacoustic imaging.
Bibliografia:ObjectType-Article-1
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content type line 23
ISSN:0169-2607
1872-7565
1872-7565
DOI:10.1016/j.cmpb.2023.107822