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Outpatient monitoring of Pectus Excavatum: a Neural Network-based approach

机译:门诊果蝇的门诊监测:基于神经网络的方法

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Pectus Excavatum (PE) is a congenital anomaly of the ribcage, at the level of the sterno-costal plane, which consists of an inward angle of the sternum, in the direction of the spine. PE is the most common of all thoracic malformations, with an incidence of 1 in 300-400 people. To monitor the progress of the pathology, severity indices, or thoracic indices, have been used over the years. Among these indices, recent studies focus on the calculation of optical measures, calculated on the optical scan of the patient's chest, which can be very accurate without exposing the patient to invasive treatments such as CT scans. In this work, data from a sample of PE patients and corresponding doctors' severity assessments have been collected and used to create a decision tool to automatically assign a severity value to the patient. The idea is to provide the physician with an objective and easy to use measuring instrument that can be exploited in an outpatient clinic context. Among several classification tools, a Probabilistic Neural Network was chosen for this task for its simple structure and learning mode.
机译:Pectus Excavatum(PE)是胸骨的先天性畸形,位于胸肋平面的水平方向,由胸骨的内向角(沿脊柱方向)组成。 PE是所有胸部畸形中最常见的,发病率为300-400人中的1人。为了监测病理的进展,多年来已经使用了严重性指数或胸腔指数。在这些指标中,最近的研究集中在光学测量的计算上,该光学测量是基于对患者胸部进行的光学扫描而计算出来的,这种测量非常精确,而无需将患者接受CT扫描等侵入性治疗。在这项工作中,已经收集了来自PE患者样本和相应医生的严重程度评估的数据,并将其用于创建决策工具以自动为患者分配严重程度值。这个想法是为医生提供一种客观,易于使用的测量仪器,可以在门诊诊所环境中使用。在几种分类工具中,由于其简单的结构和学习模式,因此选择了概率神经网络来完成此任务。

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