tombolo.plots.heterogeneity_table
1import jsonschema 2import matplotlib.pyplot as plt 3 4from .primitives.table import _table 5 6_nma_heterogeneity = { 7 "type": "object", 8 "required": ["tau2", "tau", "i2", "i2_lower", "i2_upper", "q", "q_df", "q_pval"], 9 "properties": { 10 "tau2": {"type": "number", "minimum": 0}, 11 "tau": {"type": "number", "minimum": 0}, 12 "i2": {"type": "number", "minimum": 0, "maximum": 1}, 13 "i2_lower": {"type": "number", "minimum": 0, "maximum": 1}, 14 "i2_upper": {"type": "number", "minimum": 0, "maximum": 1}, 15 "q": {"type": "number", "minimum": 0}, 16 "q_df": {"type": "integer", "minimum": 0}, 17 "q_pval": {"type": "number", "minimum": 0, "maximum": 1}, 18 }, 19} 20 21_bnma_heterogeneity = { 22 "type": "object", 23 "required": ["sd", "sd_lower", "sd_upper"], 24 "properties": { 25 "sd": {"type": "number", "minimum": 0}, 26 "sd_lower": {"type": "number", "minimum": 0}, 27 "sd_upper": {"type": "number", "minimum": 0}, 28 }, 29} 30 31_schema = { 32 "type": "object", 33 "required": ["heterogeneity"], 34 "properties": { 35 "heterogeneity": {"oneOf": [_nma_heterogeneity, _bnma_heterogeneity]} 36 }, 37} 38 39 40def heterogeneity_table(data: dict) -> plt.Figure: 41 """Summary table of heterogeneity statistics. 42 43 Args: 44 data: Result dict from `tombolo.nma` or `tombolo.bnma`. Only `heterogeneity` is used. 45 46 Returns: 47 For NMA results: Q statistic, p-value, I², and τ. 48 For BNMA results: posterior SD and 95% credible interval. 49 """ 50 jsonschema.validate(instance=data, schema=_schema) 51 return _table(data["heterogeneity"])
def
heterogeneity_table(data: dict) -> matplotlib.figure.Figure:
41def heterogeneity_table(data: dict) -> plt.Figure: 42 """Summary table of heterogeneity statistics. 43 44 Args: 45 data: Result dict from `tombolo.nma` or `tombolo.bnma`. Only `heterogeneity` is used. 46 47 Returns: 48 For NMA results: Q statistic, p-value, I², and τ. 49 For BNMA results: posterior SD and 95% credible interval. 50 """ 51 jsonschema.validate(instance=data, schema=_schema) 52 return _table(data["heterogeneity"])
Summary table of heterogeneity statistics.
Args:
data: Result dict from tombolo.nma or tombolo.bnma. Only heterogeneity is used.
Returns: For NMA results: Q statistic, p-value, I², and τ. For BNMA results: posterior SD and 95% credible interval.