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A novel Cerenkov luminescence tomography approach using multilayer fully connected neural network

机译:一种使用多层完全连接的神经网络的新型Cerenkov发光断层扫描方法

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摘要

Cerenkov luminescence tomography (CLT) has been proved as an effective tool for various biomedical applications. Because of the severe scattering of Cerenkov luminescence, the performance of CLT remains unsatisfied. This paper proposed a novel CLT reconstruction approach based on a multilayer fully connected neural network (MFCNN). Monte Carlo simulation data was employed to train the MFCNN, and the complex relationship between the surface signals and the true sources was effectively learned by the network. Both simulation and in vivo experiments were performed to validate the performance of MFCNN CLT, and it was further compared with the typical radiative transfer equation (RTE) based method. The experimental data showed the superiority of MFCNN CLT in terms of accuracy and stability. This promising approach for CLT is expected to improve the performance of optical tomography, and to promote the exploration of machine learning in biomedical applications.
机译:Cerenkov发光断层扫描(CLT)已被证明是各种生物医学应用的有效工具。 由于Cerenkov发光的严重散射,CLT的性能仍然不满足。 本文提出了一种基于多层完全连接的神经网络(MFCNN)的新型CLT重建方法。 Monte Carlo仿真数据被用来训练MFCNN,并且通过网络有效地学习了表面信号与真实源之间的复杂关系。 进行模拟和体内实验,以验证MFCNN CLT的性能,并且还与基于典型的辐射传递方程(RTE)的方法进行了比较。 实验数据在准确性和稳定性方面显示了MFCNN CLT的优越性。 预计这一有希望的CLT方法将提高光学断层扫描的性能,并促进机器学习在生物医学应用中的探索。

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