Contradictions
Count violations of contradiction rules defined in the cross-item-level metadata. These rules are written using a REDCap inspired format. The higher the number or percentage of rule violations, the lower the data quality.
Note: if you see a 1 in the legend of the plot, this indicates that there is a rule violation.

Inadmissible categorical values
Check applied to categorical variables. The categories observed in the study data should be present in the allowed categories listed in the metadata. The higher the number or percentage of non-matching categories, the lower the data quality.
Note: OBSERVED_CATEGORIES = categories present in the study data; DEFINED_CATEGORIES = categories defined in the metadata; NON_MATCHING = categories present in the study data but not defined in the metadata; NON_MATCHING_N = total number of observational units with mismatches; NON_MATCHING_N_PER_CATEGORY = number of observational units with mismatches per undefined but found category.
Range violations
Check applied to numerical or time-date variables. If a range of values is provided in the metadata, the presence of values outside the interval is checked. These can be: inadmissible values (hard limits), improbable but plausible values (soft limits), or values outside measurement ranges (detection limits). The higher the number or percentage of values outside the limits, the lower the data quality.
Attention: values outside hard limits are removed from the following quality checks.
- Inadmissible numerical values
- Inadmissible time-date values
- Uncertain numerical values
- Uncertain time-date values
SBP_0.1
sbp1
Systolic blood pressure 1

SBP_0.2
sbp2
Systolic blood pressure 2

DBP_0.1
dbp1
Diastolic blood pressure 1

DBP_0.2
dbp2
Diastolic blood pressure 2

BODY_HEIGHT_0
height
Body height

BODY_WEIGHT_0
weight
Body weight

WAIST_CIRC_0
waist
Waist circumference

CHOLES_HDL_0
hdl
HDL-cholesterol

CHOLES_LDL_0
ldl
LDL-cholesterol

CHOLES_ALL_0
cholesterol
Total cholesterol
