National Research Council, Institute of Biophysics, 90153 Palermo, Italy.
Dipartimento Matematica e Informatica, Universitá degli Studi di Palermo, 90123 Palermo, Italy.
Sensors (Basel). 2023 May 9;23(10):4598. doi: 10.3390/s23104598.
: Image analysis applications in digital pathology include various methods for segmenting regions of interest. Their identification is one of the most complex steps and therefore of great interest for the study of robust methods that do not necessarily rely on a machine learning (ML) approach. : A fully automatic and optimized segmentation process for different datasets is a prerequisite for classifying and diagnosing indirect immunofluorescence (IIF) raw data. This study describes a deterministic computational neuroscience approach for identifying cells and nuclei. It is very different from the conventional neural network approaches but has an equivalent quantitative and qualitative performance, and it is also robust against adversative noise. The method is robust, based on formally correct functions, and does not suffer from having to be tuned on specific data sets. : This work demonstrates the robustness of the method against variability of parameters, such as image size, mode, and signal-to-noise ratio. We validated the method on three datasets (Neuroblastoma, NucleusSegData, and ISBI 2009 Dataset) using images annotated by independent medical doctors. : The definition of deterministic and formally correct methods, from a functional and structural point of view, guarantees the achievement of optimized and functionally correct results. The excellent performance of our deterministic method (NeuronalAlg) in segmenting cells and nuclei from fluorescence images was measured with quantitative indicators and compared with those achieved by three published ML approaches.
: 图像分析应用程序在数字病理学中包括各种用于分割感兴趣区域的方法。它们的识别是最复杂的步骤之一,因此对于研究不依赖于机器学习 (ML) 方法的稳健方法非常感兴趣。: 对于不同的数据集,实现全自动和优化的分割过程是对间接免疫荧光 (IIF) 原始数据进行分类和诊断的前提。本研究描述了一种用于识别细胞和细胞核的确定性计算神经科学方法。它与传统的神经网络方法非常不同,但具有等效的定量和定性性能,并且对对抗性噪声也具有鲁棒性。该方法具有鲁棒性,基于形式正确的函数,并且不受必须针对特定数据集进行调整的影响。: 这项工作证明了该方法对参数变化的鲁棒性,例如图像大小、模式和信噪比。我们使用独立医生标注的图像,在三个数据集(神经母细胞瘤、细胞核分割数据集和 ISBI 2009 数据集)上验证了该方法。: 从功能和结构的角度定义确定性和形式正确的方法,保证了优化和功能正确结果的实现。我们的确定性方法(NeuronalAlg)在从荧光图像中分割细胞和细胞核方面的出色性能,通过定量指标进行了衡量,并与三种已发表的 ML 方法的性能进行了比较。