Accurately detecting positive selection and subclonality is dependent on the sequencing depth, number of subclonal mutations, and subclone frequency at time of biopsy.
收藏Figshare2022-04-28 更新2026-04-28 收录
下载链接:
https://figshare.com/articles/dataset/Accurately_detecting_positive_selection_and_subclonality_is_dependent_on_the_sequencing_depth_number_of_subclonal_mutations_and_subclone_frequency_at_time_of_biopsy_/19674917
下载链接
链接失效反馈官方服务:
资源简介:
For each VAF distribution, we computed the mean probability estimate across 25 stochastic passes through our trained neural network for the (Top row) both evolutionary mode classification, P(Selection), and the (Bottom row) number of subclone classification, P(N subclones). The interactive plots below show the mean probability estimates for both tasks at increasing subclone frequency (x-axis) and increasing subclone mutations (y-axis) for the top 25 trained deep learning models (dropdown menu). Hovering your cursor will show the mean probability estimate (z) at the given mutation-frequency combination. For P(Selection, we also provide the upper and lower bound of the 89% equal-tailed interval. In practice, to mitigate model overconfidence, we only call positive selection if the lower bound of the 89% interval is greater than 0.5. For reference, we use model TASYG7N3IJR1DLN in downstream inference tasks. (ZIP)
创建时间:
2022-04-28



