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Qoala-T: A supervised-learning tool to assess accuracy of manual quality control of automatic segmented MRI data

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Qoala-T

A supervised-learning tool to assess accuracy of manual quality control of automatic segmented MRI data

Version (1) updated March 21 2018
Qoala-T is developed in the Brain and development research center by Lara Wierenga, PhD and Eduard Klapwijk, PhD

About

Qoala-T is a supervised learning tool that asseses accuracy of manual quality control of T1 imaging scans and their automated neuroanatomical labeling processed in FreeSurfer. It is particularly intended to use in developmental datasets. This package contains data and R code as described in Klapwijk et al., (n.d.) see http://doi.org/10.1101/278358. The protocol of our in house developped manual QC procedure can be found here.

Running Qoala-T

A. Predicting scan Qoala-T score by using Braintime model

  • Open Qoala_T_A_model_based_github.R and follow the instructions.
  • With this R script Qoala-T scores for a dataset are estimated using a supervised- learning model. This model is based on 784 T1-weighted imaging scans of subjects aged between 8 and 25 years old (53% females). The manual quality assessment is described in the Qoala-T manual Manual quality control procedure for structural T1 scans, also available in the supplemental material of Klapwijk et al., (n.d.).
  • An example output table (left) and output graph (right) showing the Qoala-T score of each scan are displayed below. The figure shows the number of included and excluded predictions. The grey area represents the scans that are recommended for manual quality assesment.

B. Predicting scan Qoala-T score by rating 10% of your data

  • Open Qoala_T_B_subset_based_github.R and follow the instructions.
  • With this R script an in-house developed manual QC protocol can be applied on a subset of the dataset (e.g. 10%, the larger the set, the more reliable the results).

    A flowchart of these processes can be observed in A and B below.
    FlowChart

Support and communication

If you have any question or suggestion don't hesitate to get in touch: l.m.wierenga@fsw.leidenuniv.nl or e.t.klapwijk@fsw.leidenuniv.nl

Citation

When using Qoala-T please include the following citation:

Klapwijk, E.T., van de Kamp, F., Meulen, M., Peters, S. and Wierenga, L.M. (n.d.). Qoala-T: A supervised-learning tool to assess accuracy of manual quality control of automated neuroanatomical labeling in developmental MRI data. http://doi.org/10.1101/278358

Authors

Eduard T. Klapwijk, Ferdi van de Kamp, Mara van der Meulen, Sabine Peters, and Lara M. Wierenga



Copyright (C) 2017 Lara Wierenga - Leiden University, Brain and Development Research Center
All rights reserved

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Qoala-T: A supervised-learning tool to assess accuracy of manual quality control of automatic segmented MRI data

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