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Using Transfer Learning and Class Activation Maps Supporting Detection and Localization of Femoral Fractures on Anteroposterior Radiographs

机译:使用转移学习和类激活图来支持在前后X线片上检测和定位股骨骨折

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Acute Proximal Femoral Fractures are a growing health concern among the aging population. These fractures are often associated with significant morbidity and mortality as well as reduced quality of life. Furthermore, with the increasing life expectancy owing to advances in healthcare, the number of proximal femoral fractures may increase by a factor of 2 to 3, since the majority of fractures occur in patients over the age of 65. In this paper, we show that by using transfer learning and leveraging pre-trained models, we can achieve very high accuracy in detecting fractures and that they can be localized utilizing class activation maps.
机译:在老年人口中,急性股骨近端骨折日益引起人们的健康关注。这些骨折通常与明显的发病率和死亡率以及降低的生活质量有关。此外,随着医疗保健的进步,预期寿命的延长,股骨近端骨折的数量可能会增加2到3倍,因为大多数骨折发生在65岁以上的患者中。在本文中,我们证明了通过使用转移学习和利用预训练的模型,我们可以在裂缝检测中获得非常高的准确性,并且可以使用类激活图来定位这些裂缝。

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