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A new approach to automatic disc localization in clinical lumbar MRI: Combining machine learning with heuristics

机译:临床腰椎MRI中自动椎间盘定位的新方法:将机器学习与启发式技术相结合

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Lower back pain (LBP) is widely prevalent in people all over the world and negatively affects the quality of life due to chronic pain and change in posture. Automatic localization of intervertebral discs from lumbar MRI is the first step towards computer-aided diagnosis of lower back ailments. Till date, most of the research has been useful in determining a point within each lumbar disc, hence we go one step further and propose a localization method which outputs a tight bounding box for each disc. We use HOG (Histogram of Oriented Gradients) features along with SVM (Support Vector Machine) as classifier and successfully combine these machine learning techniques with heuristics to achieve 99% disc localization accuracy on 53 clinical cases (318 lumbar discs). We also devise our own metrics to evaluate the accuracy and tightness of our disc bounding box and compare our results with previous research.
机译:下腰痛(LBP)在世界各地的人们中普遍存在,并且由于慢性疼痛和姿势改变而对生活质量产生负面影响。腰部MRI对椎间盘的自动定位是计算机辅助诊断下腰部疾病的第一步。直到现在,大多数研究对于确定每个腰椎间盘内的一个点都是有用的,因此,我们进一步走了一步,提出了一种定位方法,该方法为每个椎间盘输出一个紧密的边界框。我们将HOG(定向梯度直方图)功能与SVM(支持向量机)一起用作分类器,并成功地将这些机器学习技术与启发式技术相结合,在53例临床病例(318个腰椎间盘突出症)中实现了99%的椎间盘定位准确性。我们还设计了自己的指标来评估光盘边界框的准确性和紧密度,并将我们的结果与以前的研究进行比较。

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