Abstract

Arterial input function (AIF) is estimated from perfusion images as a basic curve for the following deconvolution process to calculate hemodynamic variables to evaluate vascular status of tissues. However, estimation of AIF is currently based on manual annotations with prior knowledge. We propose an automatic estimation of AIF in perfusion images based on a multi-stream 3D CNN, which combined spatial and temporal features together to estimate the AIF ROI. The model is trained by manual annotations. The proposed method was trained and tested with 100 cases of perfusion-weighted imaging. The result was evaluated by dice similarity coefficient, which reached 0.79. The trained model had a better performance than the traditional method. After segmentation of the AIF ROI, the AIF was calculated by the average of all voxels in the ROI. We compared the AIF result with the manual and traditional methods, and the parameters of further processing of AIF, such as time to the maximum of the tissue residue function (Tmax), relative cerebral blood flow, and mismatch volume, which are calculated in the Section Results. The result had a better performance, the average mismatch volume reached 93.32% of the manual method, while the other methods reached 85.04 and 83.04%. We have applied the method on the cloud platform, Estroke, and the local version of its software, NeuBrainCare, which can evaluate the volume of the ischemic penumbra, the volume of the infarct core, and the ratio of mismatch between perfusion and diffusion images to help make treatment decisions, when the mismatch ratio is abnormal.

Highlights

  • In recent years, ischemic stroke has become a tremendous health problem all over the world (Naghavi et al, 2017)

  • We aimed to setup a platform based on novel arterial input function (AIF) methodology on perfusion CT/MRI which enables automatic ischemic penumbra evaluation

  • The ideal AIF is defined as a curve with large amplitude, small width, fast attenuation, and it can be described as a gamma variate function fitted to the bolus tracer time density curves (TDCs)

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Summary

Introduction

Ischemic stroke has become a tremendous health problem all over the world (Naghavi et al, 2017). The key to the treatment of stroke is to rescue the ischemic penumbra using advanced imaging techniques, such as CT/MR perfusion imaging (Hakim, 1998). Physicians in suburban hospitals cannot accurately identify the Automatic AIF Estimation ischemic penumbra due to the lack of experience in imaging interpretation, leading to significant delays in stroke treatment. Enhancing the capabilities of physicians capabilities coming from these hospitals is of great significance (Bjørnerud and Emblem, 2010). We aimed to setup a platform based on novel arterial input function (AIF) methodology on perfusion CT/MRI which enables automatic ischemic penumbra evaluation

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