University of Cagliari, Cagliari, Italy.
Institute of Molecular Bioimaging and Physiology, Italian National Research Council, Cefalú, Palermo, Italy.
Sci Rep. 2021 Feb 2;11(1):2830. doi: 10.1038/s41598-021-82085-8.
Recent advances in Quantum Machine Learning (QML) have provided benefits to several computational processes, drastically reducing the time complexity. Another approach of combining quantum information theory with machine learning-without involving quantum computers-is known as Quantum-inspired Machine Learning (QiML), which exploits the expressive power of the quantum language to increase the accuracy of the process (rather than reducing the time complexity). In this work, we propose a large-scale experiment based on the application of a binary classifier inspired by quantum information theory to the biomedical imaging context in clonogenic assay evaluation to identify the most discriminative feature, allowing us to enhance cell colony segmentation. This innovative approach offers a two-fold result: (1) among the extracted and analyzed image features, homogeneity is shown to be a relevant feature in detecting challenging cell colonies; and (2) the proposed quantum-inspired classifier is a novel and outstanding methodology, compared to conventional machine learning classifiers, for the evaluation of clonogenic assays.
近年来,量子机器学习(QML)的发展为许多计算过程带来了益处,极大地降低了时间复杂度。另一种将量子信息论与机器学习相结合的方法,称为量子启发式机器学习(QiML),它利用量子语言的表达能力来提高过程的准确性(而不是降低时间复杂度)。在这项工作中,我们提出了一项基于量子信息理论启发的二进制分类器在克隆形成试验评估中的生物医学成像背景下的应用的大规模实验,以识别最具判别力的特征,从而增强细胞集落的分割。这种创新方法带来了双重结果:(1)在所提取和分析的图像特征中,同质性被证明是检测具有挑战性的细胞集落的一个相关特征;(2)与传统的机器学习分类器相比,所提出的量子启发式分类器是一种新颖而出色的方法,可用于克隆形成试验的评估。