Author Correction: Quantification of early learning and movement sub-structure predictive of motor performance (Scientific Reports, (2021), 11, 1, (14405), 10.1038/s41598-021-93944-9)

Vikram Jakkamsetti, William Scudder, Gauri Kathote, Qian Ma, Gustavo Angulo, Aksharkumar Dobariya, Roger N. Rosenberg, Bruce Beutler, Juan M. Pascual

Research output: Contribution to journalComment/debatepeer-review

Abstract

The original version of this Article contained errors. In the legend of Figure 2, “A larger distribution amplitude (i.e., an increased variance) in a regular “saw-tooth” pattern (indicating a lower approximate entropy) characterizes mice with lower rotarod scores in B compared to mice in A. (C) Scatter plots for intra-session features with their best fit line.” now reads: “A regular “saw-tooth” pattern (indicating a lower approximate entropy) characterizes mice with lower rotarod scores in B compared to mice in A. (C,D) Scatter plots for intra-session features with their best fit line.” In the legend of Figure 3, “(A,B) Representative horizontal paw position changes over time for mice with greater (A) and smaller (B) rotarod scores. A broader distribution of amplitudes (indicating greater variance) is characteristic of mice with greater rotarod scores in A as compared to mice in (B). (C) Scatter plots for intra-session features with their best fit line.” now reads: “(A,B) Representative horizontal paw position changes over time for mice with greater (A) and smaller (B) rotarod scores. (C,D) Scatter plots for intra-session features with their best fit line.” The original Article has been corrected.

Original languageEnglish (US)
Article number19762
JournalScientific reports
Volume11
Issue number1
DOIs
StatePublished - Dec 2021

ASJC Scopus subject areas

  • General

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