A Non-invasive 2D Digital Imaging Method for Detection of Surface Lesions Using Machine Learning

Nosheen Hussain, P. Cooper, S. Shnyder, H. Ugail, A. M. Bukar, David Connah
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引用次数: 3

Abstract

As part of the cancer drug development process, evaluation in experimental subcutaneous tumour transplantation models is a key process. This involves implanting tumour material underneath the mouse skin and measuring tumour growth using calipers. This methodology has been proven to have poor reproducibility and accuracy due to observer variation. Furthermore the physical pressure placed on the tumour using calipers is not only distressing for the mouse but could also lead to tumour damage. Non-invasive digital imaging of the tumour would reduce handling stresses and allow volume determination without any potential tumour damage. This is challenging as the tumours sit under the skin and have the same colour pattern as the mouse body making them hard to differentiate in a 2D image. We used the pre-trained convolutional neural network VGG-16 and extracted multiple layers in an attempt to accurately locate the tumour. When using the layer FC7 after RELU activation for extraction, a recognition rate of 89.85% was achieved.
一种利用机器学习检测表面病变的无创二维数字成像方法
作为抗癌药物开发过程的一部分,实验皮下肿瘤移植模型的评估是一个关键过程。这包括在小鼠皮肤下植入肿瘤材料,并用卡尺测量肿瘤的生长情况。由于观察者的变化,这种方法已被证明具有较差的再现性和准确性。此外,使用卡钳对肿瘤施加的物理压力不仅会使小鼠感到痛苦,还可能导致肿瘤损伤。肿瘤的非侵入性数字成像将减少处理压力,并允许在没有任何潜在肿瘤损伤的情况下确定体积。这是具有挑战性的,因为肿瘤位于皮肤下,并且与小鼠身体具有相同的颜色模式,因此很难在二维图像中区分它们。我们使用预训练的卷积神经网络VGG-16,并提取多个层,试图准确定位肿瘤。采用RELU活化后的FC7层进行提取,识别率达到89.85%。
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