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1.
Journal of the Korean Neurological Association ; : 417-419, 2019.
Artículo en Coreano | WPRIM | ID: wpr-766811

RESUMEN

No abstract available.


Asunto(s)
Leucoencefalopatías , Metotrexato , Accidente Cerebrovascular
2.
Journal of the Korean Neurological Association ; : 166-170, 2019.
Artículo en Coreano | WPRIM | ID: wpr-766772

RESUMEN

Infective endocarditis (IE) is not a common cause of stroke. Considering the high mortality rates, however, IE should always be considered as a possible cause of stroke even when the chances are low. Atrioesophageal fistula is a life-threatening condition that can cause IE and subsequent stroke, but the diagnosis is often delayed due to its rarity. We report a case of multiple embolic infarcts caused by infective endocarditis associated with atrioesophageal fistula after radiofrequency catheter ablation for atrial fibrillation.


Asunto(s)
Fibrilación Atrial , Ablación por Catéter , Diagnóstico , Endocarditis , Fístula Esofágica , Fístula , Mortalidad , Accidente Cerebrovascular
4.
Nuclear Medicine and Molecular Imaging ; : 459-467, 2009.
Artículo en Coreano | WPRIM | ID: wpr-155612

RESUMEN

PURPOSE: The maximum likelihood-expectation maximization (ML-EM) is the statistical reconstruction algorithm derived from probabilistic model of the emission and detection processes. Although the ML-EM has many advantages in accuracy and utility, the use of the ML-EM is limited due to the computational burden of iterating processing on a CPU (central processing unit). In this study, we developed a parallel computing technique on GPU (graphic processing unit) for ML-EM algorithm. MATERIALS AND METHODS: Using Geforce 9800 GTX+ graphic card and CUDA (compute unified device architecture) the projection and backprojection in ML-EM algorithm were parallelized by NVIDIA's technology. The time delay on computations for projection, errors between measured and estimated data and backprojection in an iteration were measured. Total time included the latency in data transmission between RAM and GPU memory. RESULTS: The total computation time of the CPU- and GPU-based ML-EM with 32 iterations were 3.83 and 0.26 sec, respectively. In this case, the computing speed was improved about 15 times on GPU. When the number of iterations increased into 1024, the CPU- and GPU-based computing took totally 18 min and 8 sec, respectively. The improvement was about 135 times and was caused by delay on CPU-based computing after certain iterations. On the other hand, the GPU-based computation provided very small variation on time delay per iteration due to use of shared memory. CONCLUSION: The GPU-based parallel computation for ML-EM improved significantly the computing speed and stability. The developed GPU-based ML-EM algorithm could be easily modified for some other imaging geometries.


Asunto(s)
Mano , Procesamiento de Imagen Asistido por Computador , Memoria , Modelos Estadísticos , Tomografía Computarizada de Emisión de Fotón Único
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