Modified of Single Deepest Vertical Detection (SDVD) Algorithm for Amniotic Fluid Volume Classification

Putu Desiana, Wulaning Ayu, G. Pradipta, Roy Rudolf Huizen, Kadek Eka, Sapta, G. Artana
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Abstract

Amniotic fluid a crucial role in ensuring the well-being of the fetus during pregnancy and is contained within the amnion cavity, which is surrounded by a membrane. Several studies have shown that volume of amniotic fluid can vary throughout pregnancy and is closely linked to the health and safety of the fetus. This indicates that it is essential to perform accurate measurement and identification of its volume. Obstetric specialist often use a manual method to identify amniotic fluid by visually determining the longest straight vertical line between the upper and lower boundaries. Therefore, this study aims to develop detection model, known as modified Single Deepest Vertical Detection (SDVD) algorithm to automatically measure the longest vertical line by following medical rules and regulations. SDVD algorithm was designed to measure the depth of amniotic fluid vertically by searching the column of pixels that comprised the image sample, excluding any intersection with the fetal body. Performance testing was carried out using 130 images by comparing the manual measurement results obtained by obstetric specialists and the proposed model. Based on the experimental results using modified SDVD, the average accuracy, precision, and recall achieved for amniotic fluid classification were 92.63%, 85.23%, and 95.6%, respectively.
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改进用于羊水体积分类的单一最深垂直检测(SDVD)算法
羊水在怀孕期间对确保胎儿的健康起着至关重要的作用,羊水包含在羊膜腔内,羊膜腔由一层薄膜包围。多项研究表明,羊水量在整个孕期都会发生变化,并且与胎儿的健康和安全密切相关。这表明,准确测量和识别羊水量至关重要。产科专家通常使用人工方法,通过目测上下边界之间最长的垂直直线来识别羊水。因此,本研究旨在开发检测模型,即改进的单最深垂直检测(SDVD)算法,以遵循医学规则和条例自动测量最长垂直线。SDVD 算法通过搜索图像样本中的像素列,排除与胎儿身体的任何交点,垂直测量羊水深度。通过比较产科专家的人工测量结果和所提出的模型,使用 130 幅图像进行了性能测试。根据使用修改后的 SDVD 的实验结果,羊水分类的平均准确率、精确率和召回率分别为 92.63%、85.23% 和 95.6%。
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