xcp_d.utils.qcmetrics module
Quality control metrics.
- xcp_d.utils.qcmetrics.compute_dvars(*, datat, remove_zerovariance=True, variance_tol=1e-07)[source]
Compute standard DVARS.
- Parameters:
datat (
numpy.ndarray) – The data matrix from which to calculate DVARS. Ordered as vertices by timepoints.- Returns:
numpy.ndarray– The calculated DVARS array. A (timepoints,) array.numpy.ndarray– The calculated standardized DVARS array. A (timepoints,) array.
- xcp_d.utils.qcmetrics.compute_registration_qc(bold_mask_anatspace, anat_mask_anatspace, bold_mask_stdspace, template_mask)[source]
Compute quality of registration metrics.
This function will calculate a series of metrics, including:
Dice’s similarity index,
Pearson correlation coefficient, and
Coverage
between the BOLD-to-T1w brain mask and the T1w mask, as well as between the BOLD-to-template brain mask and the template mask.
- Parameters:
bold_mask_anatspace (
str) – Path to the BOLD brain mask in anatomical (T1w or T2w) space.anat_mask_anatspace (
str) – Path to the anatomically-derived brain mask in anatomical space.bold_mask_stdspace (
str) – Path to the BOLD brain mask in template space.template_mask (
str) – Path to the template’s official brain mask.
- Returns:
reg_qc (dict) – Quality control measures between different inputs.
qc_metadata (dict) – Metadata describing the QC measures.
- xcp_d.utils.qcmetrics.dice(input1, input2)[source]
Calculate Dice coefficient between two arrays.
Computes the Dice coefficient (also known as Sorensen index) between two binary images.
The metric is defined as
\[DC=\frac{2|A\cap B|}{|A|+|B|}\], where \(A\) is the first and \(B\) the second set of samples (here: binary objects). This method was first proposed in Dice[1] and Sorensen[2].
- Parameters:
input1/input2 (
numpy.ndarray) – Numpy arrays to compare. Can be any type but will be converted into binary: False where 0, True everywhere else.- Returns:
coef – The Dice coefficient between
input1andinput2. It ranges from 0 (no overlap) to 1 (perfect overlap).- Return type:
References
- xcp_d.utils.qcmetrics.overlap(input1, input2)[source]
Calculate overlap coefficient between two images.
The metric is defined as
\[DC=\frac{|A \cap B||}{min(|A|,|B|)}\], where \(A\) is the first and \(B\) the second set of samples (here: binary objects).
The overlap coefficient is also known as the Szymkiewicz-Simpson coefficient [3].
- Parameters:
input1/input2 (
numpy.ndarray) – Numpy arrays to compare. Can be any type but will be converted into binary: False where 0, True everywhere else.- Returns:
coef – Coverage between two images.
- Return type:
References
[3] MK Vijaymeena and K Kavitha. A survey on similarity measures in text mining. Machine Learning and Applications: An International Journal, 3(2):19–28, 2016. URL: https://doi.org/10.5121/mlaij.2016.3103, doi:10.5121/mlaij.2016.3103.
- xcp_d.utils.qcmetrics.pearson(input1, input2)[source]
Calculate Pearson product moment correlation between two images.
- Parameters:
input1/input2 (
numpy.ndarray) – Numpy arrays to compare. Can be any type but will be converted into binary: False where 0, True everywhere else.- Returns:
coef – Correlation between the two images.
- Return type: