ICAR, Institute for High-Performance Computing and Networking, National Research Council, Naples, Italy.
IBPM, Institute of Molecular Biology and Pathology, National Research Council, Rome, Italy.
Sci Data. 2023 Oct 4;10(1):677. doi: 10.1038/s41597-023-02540-1.
Detecting and tracking multiple moving objects in a video is a challenging task. For living cells, the task becomes even more arduous as cells change their morphology over time, can partially overlap, and mitosis leads to new cells. Differently from fluorescence microscopy, label-free techniques can be easily applied to almost all cell lines, reducing sample preparation complexity and phototoxicity. In this study, we present ALFI, a dataset of images and annotations for label-free microscopy, made publicly available to the scientific community, that notably extends the current panorama of expertly labeled data for detection and tracking of cultured living nontransformed and cancer human cells. It consists of 29 time-lapse image sequences from HeLa, U2OS, and hTERT RPE-1 cells under different experimental conditions, acquired by differential interference contrast microscopy, for a total of 237.9 hours. It contains various annotations (pixel-wise segmentation masks, object-wise bounding boxes, tracking information). The dataset is useful for testing and comparing methods for identifying interphase and mitotic events and reconstructing their lineage, and for discriminating different cellular phenotypes.
在视频中检测和跟踪多个运动目标是一项具有挑战性的任务。对于活细胞来说,由于细胞随时间改变形态、可能部分重叠以及有丝分裂会产生新的细胞,因此任务变得更加艰巨。与荧光显微镜不同,无标记技术可以很容易地应用于几乎所有的细胞系,从而降低了样本制备的复杂性和光毒性。在这项研究中,我们提出了 ALFI 数据集,这是一个用于无标记显微镜的图像和注释数据集,已向科学界公开,该数据集显著扩展了目前用于检测和跟踪培养的非转化和癌症人类细胞的专家标记数据的范围。它由 HeLa、U2OS 和 hTERT RPE-1 细胞在不同实验条件下通过相差显微镜获得的 29 个时程图像序列组成,总时长为 237.9 小时。它包含各种注释(像素级分割掩模、对象级边界框、跟踪信息)。该数据集可用于测试和比较用于识别间期和有丝分裂事件并重建其谱系以及区分不同细胞表型的方法。