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A Novel Approach towards Early Detection of Obliteration in Lumbar Lordosis

机译:早期检测腰椎Lordosis闭塞症的新方法

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The millennial age group (18 to 30 years) spend at least 6 hours sitting, either in college or at their workspace. High screen time as a routine, is the major cause for numerous spinal problems. Despite the wide research carried out on postural abnormalities, there exists numerous unrequited queries with regards to lumbar lordosis estimations, due to indeterminate parameters such as age, gender, lifestyle and diet. This work emphasizes the proficient method by observing the posture of a person for early detection of obliteration in Lumbar Lordosis. This further contributes to efficient diagnosis and treatment of spine ailments. With a novel approach to hardware using the myRIO hardware coupled with LabVIEW for interactive interface, the calibration is enhanced using machine learning (ML) - kNN Classifier. The use of machine learning accounts for the variations in the ideal angles of segmented sagittal measures with respect to different subjects. The device is developed to be a non-invasive, user friendly instrument to analyse the casual seated posture trends of the subject. The male subjects are expected to show the tilt angles in the range of -16.3 to -17.2 degrees and similar threshold for females are -15.8 to -16.8 degrees. Out of 120 subjects taken into consideration, the device could accurately classify subjects with obliterated or normal lumbar lordosis). An accuracy and f1- score of 94% and 90% respectively was achieved by the ML model.
机译:千禧一代年龄段(18至30岁)在大学或工作场所至少要坐6个小时。通常,较长的屏幕检查时间是造成许多脊柱问题的主要原因。尽管对姿势异常进行了广泛的研究,但是由于年龄,性别,生活方式和饮食等不确定的参数,关于腰椎前凸估计存在许多未回答的问题。这项工作强调了一种有效的方法,即观察人的姿势以及早发现腰椎前凸症的闭塞症。这进一步有助于脊柱疾病的有效诊断和治疗。通过使用myRIO硬件和LabVIEW作为交互式接口的新颖硬件方法,可以使用机器学习(ML)-kNN分类器来增强校准。机器学习的使用考虑了分段矢状量度相对于不同主题的理想角度的变化。该设备被开发为一种非侵入性,用户友好的仪器,可以分析受试者的随意坐姿趋势。预期男性受试者的倾斜角在-16.3至-17.2度的范围内,而女性的相似阈值为-15.8至-16.8度。在考虑的120名受试者中,该设备可以对患有闭塞性或正常腰椎前凸的受试者进行准确分类。 ML模型的准确度和f1-分数分别达到94%和90%。

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