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Recognition of brain tumors in MRI images using texture analysis

机译:使用纹理分析识别MRI图像中的脑肿瘤

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Objectives Brain neoplasms or intracranial tumors, which are more common in older adults, can affect individuals of any age including pediatric and children. Exposure to carcinogenic agents including ionizing radiation and family history is one of the main causes of the disease. Early diagnosis is crucial to avoid prolonged. patients' suffering. The aim of the study was to efficiently recognize the brain tumors from the other brain tissues which include grey and white matter as well as cerebrospinal fluid (CSF). Materials and methods This study was performed using axial, sagittal and coronal views for fifty brain tumor patients randomly selected from a set of 200 patients, with a “control” set consisting of images showing no sign of disease; and the “test” brain MRI images for patients diagnosed with brain tumor. The study includes both genders with age ranging from 18?years to 83?years old, (56.5?±?17.2). The brain images were acquired using a standard head coil Philips Intera 1.5 Tesla machine (USA). The thickness of each section in the entire sequence was 8?mm. Acquisition of T2-weighted and T1-weighted were performed. Interactive Data Language software was used to analyze the data. Results The results of this study showed that: the overall accuracy of classification process was 94.8%, and for the tumor; the sensitivity was 97.3%. White matter and grey matter showed a classification accuracy of 95.7% and 89.7% and for CSF the accuracy was 94.3%. Conclusion The results showed that brain tumor can be classified successfully and delineated using texture analysis with minimum efforts and with high accuracy for brain tumors.
机译:目标脑肿瘤或颅内肿瘤,在老年人中更常见,可以影响任何年龄的人,包括儿科和儿童。暴露于致癌剂,包括电离辐射和家族史是疾病的主要原因之一。早期诊断至关重要,以避免长时间。患者的痛苦。该研究的目的是有效地识别来自其​​他脑组织的脑肿瘤,包括灰白和白质以及脑脊液(CSF)。材料和方法本研究使用从一组200名患者随机选择的五十个脑肿瘤患者进行轴向,矢状和冠状图,其中包含“控制”组,包括没有疾病的迹象的图像;和诊断脑肿瘤的患者的“测试”脑MRI图像。该研究包括年龄从18岁到83岁的年龄的性别,(56.5?±17.2)。使用标准头部线圈飞利浦Intera 1.5 Tesla机器(USA)获取脑图像。整个序列中的每个部分的厚度为8Ωmm。采集T2加权和T1加权进行。交互式数据语言软件用于分析数据。结果本研究结果表明:分类过程的总体准确性为94.8%,肿瘤为94.8%;敏感性为97.3%。白质和灰质显示出95.7%和89.7%的分类精度,CSF的准确性为94.3%。结论结果表明,使用纹理分析,脑肿瘤可以成功分类,并以最小的努力和脑肿瘤的高精度划分。

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