Departamento de Radiobiología, Centro Atómico Constituyentes, Comisión Nacional de Energía Atómica (CNEA), Buenos Aires, Argentina.
Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET), Buenos Aires, Argentina.
PLoS One. 2023 Dec 21;18(12):e0293891. doi: 10.1371/journal.pone.0293891. eCollection 2023.
Knowledge of the 10B microdistribution is of great relevance in BNCT studies. Since 10B concentration assesment through neutron autoradiography depends on the correct quantification of tracks in a nuclear track detector, image acquisition and processing conditions should be controlled and verified, in order to obtain accurate results to be applied in the frame of BNCT. With this aim, an image verification process was proposed, based on parameters extracted from the quantified nuclear tracks. Track characterization was performed by selecting a set of morphological and pixel-intensity uniformity parameters from the quantified objects (area, diameter, roundness, aspect ratio, heterogeneity and clumpiness). Their distributions were studied, leading to the observation of varying behaviours in images generated by different samples and acquisition conditions. The distributions corresponding to samples coming from the BNC reaction showed similar attributes in each analyzed parameter, proving to be robust to the experimental process, but sensitive to light and focus conditions. Considering those observations, a manual feature extraction was performed as a pre-processing step. A Support Vector Machine (SVM) and a fully dense Neural Network (NN) were optimized, trained, and tested. The final performance metrics were similar for both models: 93%-93% for the SVM, vs 94%-95% for the NN in accuracy and precision respectively. Based on the distribution of the predicted class probabilities, the latter had a better capacity to reject inadequate images, so the NN was selected to perform the image verification step prior to quantification. The trained NN was able to correctly classify the images regardless of their track density. The exhaustive characterization of the nuclear tracks provided new knowledge related to the autoradiographic images generation. The inclusion of machine learning in the analysis workflow proves to optimize the boron determination process and paves the way for further applications in the field of boron imaging.
10B 微分布知识在 BNCT 研究中具有重要意义。由于通过中子放射自显影评估 10B 浓度取决于核径迹探测器中径迹的正确量化,因此应控制和验证图像采集和处理条件,以获得可应用于 BNCT 框架的准确结果。为此,提出了一种基于从量化核径迹中提取的参数的图像验证过程。通过从量化对象中选择一组形态和像素强度均匀性参数(面积、直径、圆度、纵横比、异质性和团聚性)来进行径迹特征化。研究了它们的分布,导致观察到不同样品和采集条件生成的图像具有不同的行为。来自 BNC 反应的样品产生的图像的分布在每个分析参数中都具有相似的属性,这证明对实验过程具有鲁棒性,但对光照和聚焦条件敏感。考虑到这些观察结果,作为预处理步骤执行了手动特征提取。优化、训练和测试了支持向量机 (SVM) 和全密集神经网络 (NN)。两种模型的最终性能指标相似:SVM 的准确度和精度分别为 93%-93%,NN 为 94%-95%。基于预测类概率的分布,后者具有更好的拒绝不合适图像的能力,因此选择 NN 在量化之前执行图像验证步骤。经过训练的 NN 能够正确分类图像,而与它们的径迹密度无关。核径迹的详尽特征化提供了与放射自显影图像生成相关的新知识。将机器学习纳入分析工作流程证明可以优化硼的确定过程,并为硼成像领域的进一步应用铺平道路。