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A Combined Simulation and Machine Learning Approach for Image-Based Force Classification During Robotized Intravitreal Injections

机译:基于图像的力学分类的组合仿真和机器学习方法,在机器化玻璃体内注射过程中

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Intravitreal injection is one of the most common treatment strategies for chronic ophthalmic diseases. The last decade has seen the number of intravitreal injections dramatically increase, and with it, adverse effects and limitations. To overcome these issues, medical assistive devices for robotized injections have been proposed and are projected to improve delivery mechanisms for new generation of pharmacological solutions. In our work, we propose a method aimed at improving the safety features of such envisioned robotic systems. Our vision-based method uses a combination of 2D OCT data, numerical simulation and machine learning to estimate the range of the force applied by an injection needle on the sclera. We build a Neural Network (NN) to predict force ranges from Optical Coherence Tomography (OCT) images of the sclera directly. To avoid the need of large training data sets, the NN is trained on images of simulated deformed sclera. We validate our approach on real OCT images collected on five ex vivo porcine eyes using a robotically-controlled needle. Results show that the applied force range can be predicted with 94% accuracy. Being real-time, this solution can be integrated in the control loop of the system, allowing for in-time withdrawal of the needle.
机译:玻璃体内注射是慢性眼科疾病最常见的治疗策略之一。过去十年已经看到玻璃体内注射的数量显着增加,并且有不良影响和局限性。为了克服这些问题,已经提出了用于机器化注射的医疗辅助装置,并预计以改善新一代药理解决方案的输送机制。在我们的工作中,我们提出了一种旨在改善这种设想的机器人系统的安全特征的方法。我们基于视觉的方法使用2D OCT数据,数值模拟和机器学习的组合来估计巩膜上注射针施加的力的范围。我们构建一个神经网络(NN),以预测来自光学相干断层扫描(OCT)图像的力范围直接的图像。为避免需要大型训练数据集,NN在模拟变形巩膜的图像上培训。我们使用机器人控制的针头在五个离体猪眼上收集的Real OCT图像上验证我们的方法。结果表明,施加的力范围可以预测94%的精度。实时,该解决方案可以集成在系统的控制回路中,允许立即取出针。

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