Impact of pixel, intensity, & temporal resolution on automatic scoring of LUS from Coronavirus disease 2019 patients
Umair Khan, F. Mento, L. N. Giacomaz, Riccardo Trevisan, L. Demi, A. Smargiassi, R. Inchingolo, T. Perrone
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引用次数: 2
Abstract
With the outbreak of the COVID-19, remote diagnosis, patient monitoring, collection, and transmission of data from electronic devices is rapidly taking share in the health sector. These devices are however limited on resources like energy, memory and processing power. Consequently, it is highly relevant to investigate minimizing the data, keeping intact the information content. The objective of this study is to thus observe the impact of pixel, intensity, & temporal resolution on automated scoring of LUS data. First, 448 videos from 20 patients were normalized to a common pixel resolution, i.e., the largest found over the dataset (841 pixels/cm2). Next, pixel and intensity resolution were further reduced by down-sampling factor of 2,3, and 4, and by quantization factor of 2,4, and 8 respectively. Furthermore, number of frames were down-sampled as a function of time by factor of 1 to 10 with step-size of 1. Resampled, quantized, and temporally reduced videos were evaluated using the DL algorithm (doi: 10.1109/TMI.2020.2994459) and frame, video, and prognostic-level results were obtained. It was found that no significant change in the prognostic results is observed when the data is reduced by 32 times to its original size and by 10 times to the original number of frames. © 2022 Acoustical Society of America.
像素、强度和时间分辨率对2019冠状病毒病患者LUS自动评分的影响
随着2019冠状病毒病的爆发,远程诊断、患者监测、电子设备数据的收集和传输正在卫生部门迅速占据一席之地。然而,这些设备在能源、内存和处理能力等资源上受到限制。因此,研究最小化数据,保持完整的信息内容是高度相关的。本研究的目的是观察像素、强度和时间分辨率对LUS数据自动评分的影响。首先,将来自20名患者的448个视频归一化为普通像素分辨率,即在数据集中发现的最大分辨率(841像素/cm2)。接下来,分别通过降采样因子2、3、4和量化因子2、4、8进一步降低像素分辨率和强度分辨率。此外,帧数作为时间的函数,以1到10的因子下采样,步长为1。使用DL算法(doi: 10.1109/TMI.2020.2994459)评估重新采样、量化和暂时简化的视频,并获得帧、视频和预后水平的结果。结果发现,当数据减少32倍到原始大小,减少10倍到原始帧数时,预测结果没有显著变化。©2022美国声学学会。
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