Yapay Sinir Ağları Kullanılarak Pediatrik Akciğer Röntgen Görüntülerinden Pnömoni Tespiti

Özgür Dündar, Sabri Koçer
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Abstract

Pneumonia Detection from Pediatric Lung X-Ray Images Using Artificial Neural Networks ABSTRACT Studies on medical imaging have grown significantly in recent years. Doctors have a crucial convenience for diagnosis thanks to semi- or fully automatic region recognition in medical imaging. It is crucial to support treatment without a specialist doctor, particularly in those nations where there is a dearth of such medical professionals. The little air sacs known as alveoli are most impacted by pneumonia, a lung inflammation. A key component of providing the right therapy conditions to heal patients and reduce harm while eradicating inflammation is early detection and precise diagnosis. Noise and blurring in patient photos obtained from X-ray machines are cleaned using deep learning algorithms and image processing techniques, and they are very helpful in. In this study, we studied chest X-ray images of pediatric patients with pneumonia and healthy individuals. XGBoost (eXtreme gradient boosting) is an innovative machine learning algorithm based on decision tree and using gradient boosting in its computations. It achieved 97.01% success with high classification performance. Keywords: Medical imaging, Machine learning, Pediatric Chest X-ray
利用人工神经网络从儿科肺部 X 光图像中检测肺炎
利用人工神经网络从小儿肺部 X 射线图像中检测肺炎 ABSTRACT 近年来,医学影像研究有了长足的发展。医学影像中的半自动或全自动区域识别为医生的诊断提供了极大的便利。这对于在没有专科医生的情况下支持治疗至关重要,尤其是在那些缺乏此类医疗专业人员的国家。被称为肺泡的小气囊受肺炎(一种肺部炎症)的影响最大。在根除炎症的同时,为患者提供正确的治疗条件以治愈疾病并减少伤害,其关键在于早期发现和精确诊断。利用深度学习算法和图像处理技术对从 X 光机获取的病人照片中的噪音和模糊进行清理,非常有助于诊断。在这项研究中,我们研究了肺炎儿科患者和健康人的胸部 X 光图像。XGBoost(eXtreme gradient boosting)是一种基于决策树的创新机器学习算法,在计算中使用梯度提升技术。它的分类成功率高达 97.01%。 关键词医学成像 机器学习 小儿胸部 X 光片
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