ALFI: Cell cycle phenotype annotations of label-free time-lapse imaging data from cultured human cells
Articolo
Data di Pubblicazione:
2023
Abstract:
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.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
ALFI dataset; label-free imaging; cell segmentation; event detection; tracking; lineage
Elenco autori:
Antonelli, Laura; Guarracino, MARIO ROSARIO; Maddalena, Lucia
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