peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/scipy
/stats
/_odds_ratio.py
import numpy as np | |
from scipy.special import ndtri | |
from scipy.optimize import brentq | |
from ._discrete_distns import nchypergeom_fisher | |
from ._common import ConfidenceInterval | |
def _sample_odds_ratio(table): | |
""" | |
Given a table [[a, b], [c, d]], compute a*d/(b*c). | |
Return nan if the numerator and denominator are 0. | |
Return inf if just the denominator is 0. | |
""" | |
# table must be a 2x2 numpy array. | |
if table[1, 0] > 0 and table[0, 1] > 0: | |
oddsratio = table[0, 0] * table[1, 1] / (table[1, 0] * table[0, 1]) | |
elif table[0, 0] == 0 or table[1, 1] == 0: | |
oddsratio = np.nan | |
else: | |
oddsratio = np.inf | |
return oddsratio | |
def _solve(func): | |
""" | |
Solve func(nc) = 0. func must be an increasing function. | |
""" | |
# We could just as well call the variable `x` instead of `nc`, but we | |
# always call this function with functions for which nc (the noncentrality | |
# parameter) is the variable for which we are solving. | |
nc = 1.0 | |
value = func(nc) | |
if value == 0: | |
return nc | |
# Multiplicative factor by which to increase or decrease nc when | |
# searching for a bracketing interval. | |
factor = 2.0 | |
# Find a bracketing interval. | |
if value > 0: | |
nc /= factor | |
while func(nc) > 0: | |
nc /= factor | |
lo = nc | |
hi = factor*nc | |
else: | |
nc *= factor | |
while func(nc) < 0: | |
nc *= factor | |
lo = nc/factor | |
hi = nc | |
# lo and hi bracket the solution for nc. | |
nc = brentq(func, lo, hi, xtol=1e-13) | |
return nc | |
def _nc_hypergeom_mean_inverse(x, M, n, N): | |
""" | |
For the given noncentral hypergeometric parameters x, M, n,and N | |
(table[0,0], total, row 0 sum and column 0 sum, resp., of a 2x2 | |
contingency table), find the noncentrality parameter of Fisher's | |
noncentral hypergeometric distribution whose mean is x. | |
""" | |
nc = _solve(lambda nc: nchypergeom_fisher.mean(M, n, N, nc) - x) | |
return nc | |
def _hypergeom_params_from_table(table): | |
# The notation M, n and N is consistent with stats.hypergeom and | |
# stats.nchypergeom_fisher. | |
x = table[0, 0] | |
M = table.sum() | |
n = table[0].sum() | |
N = table[:, 0].sum() | |
return x, M, n, N | |
def _ci_upper(table, alpha): | |
""" | |
Compute the upper end of the confidence interval. | |
""" | |
if _sample_odds_ratio(table) == np.inf: | |
return np.inf | |
x, M, n, N = _hypergeom_params_from_table(table) | |
# nchypergeom_fisher.cdf is a decreasing function of nc, so we negate | |
# it in the lambda expression. | |
nc = _solve(lambda nc: -nchypergeom_fisher.cdf(x, M, n, N, nc) + alpha) | |
return nc | |
def _ci_lower(table, alpha): | |
""" | |
Compute the lower end of the confidence interval. | |
""" | |
if _sample_odds_ratio(table) == 0: | |
return 0 | |
x, M, n, N = _hypergeom_params_from_table(table) | |
nc = _solve(lambda nc: nchypergeom_fisher.sf(x - 1, M, n, N, nc) - alpha) | |
return nc | |
def _conditional_oddsratio(table): | |
""" | |
Conditional MLE of the odds ratio for the 2x2 contingency table. | |
""" | |
x, M, n, N = _hypergeom_params_from_table(table) | |
# Get the bounds of the support. The support of the noncentral | |
# hypergeometric distribution with parameters M, n, and N is the same | |
# for all values of the noncentrality parameter, so we can use 1 here. | |
lo, hi = nchypergeom_fisher.support(M, n, N, 1) | |
# Check if x is at one of the extremes of the support. If so, we know | |
# the odds ratio is either 0 or inf. | |
if x == lo: | |
# x is at the low end of the support. | |
return 0 | |
if x == hi: | |
# x is at the high end of the support. | |
return np.inf | |
nc = _nc_hypergeom_mean_inverse(x, M, n, N) | |
return nc | |
def _conditional_oddsratio_ci(table, confidence_level=0.95, | |
alternative='two-sided'): | |
""" | |
Conditional exact confidence interval for the odds ratio. | |
""" | |
if alternative == 'two-sided': | |
alpha = 0.5*(1 - confidence_level) | |
lower = _ci_lower(table, alpha) | |
upper = _ci_upper(table, alpha) | |
elif alternative == 'less': | |
lower = 0.0 | |
upper = _ci_upper(table, 1 - confidence_level) | |
else: | |
# alternative == 'greater' | |
lower = _ci_lower(table, 1 - confidence_level) | |
upper = np.inf | |
return lower, upper | |
def _sample_odds_ratio_ci(table, confidence_level=0.95, | |
alternative='two-sided'): | |
oddsratio = _sample_odds_ratio(table) | |
log_or = np.log(oddsratio) | |
se = np.sqrt((1/table).sum()) | |
if alternative == 'less': | |
z = ndtri(confidence_level) | |
loglow = -np.inf | |
loghigh = log_or + z*se | |
elif alternative == 'greater': | |
z = ndtri(confidence_level) | |
loglow = log_or - z*se | |
loghigh = np.inf | |
else: | |
# alternative is 'two-sided' | |
z = ndtri(0.5*confidence_level + 0.5) | |
loglow = log_or - z*se | |
loghigh = log_or + z*se | |
return np.exp(loglow), np.exp(loghigh) | |
class OddsRatioResult: | |
""" | |
Result of `scipy.stats.contingency.odds_ratio`. See the | |
docstring for `odds_ratio` for more details. | |
Attributes | |
---------- | |
statistic : float | |
The computed odds ratio. | |
* If `kind` is ``'sample'``, this is sample (or unconditional) | |
estimate, given by | |
``table[0, 0]*table[1, 1]/(table[0, 1]*table[1, 0])``. | |
* If `kind` is ``'conditional'``, this is the conditional | |
maximum likelihood estimate for the odds ratio. It is | |
the noncentrality parameter of Fisher's noncentral | |
hypergeometric distribution with the same hypergeometric | |
parameters as `table` and whose mean is ``table[0, 0]``. | |
Methods | |
------- | |
confidence_interval : | |
Confidence interval for the odds ratio. | |
""" | |
def __init__(self, _table, _kind, statistic): | |
# for now, no need to make _table and _kind public, since this sort of | |
# information is returned in very few `scipy.stats` results | |
self._table = _table | |
self._kind = _kind | |
self.statistic = statistic | |
def __repr__(self): | |
return f"OddsRatioResult(statistic={self.statistic})" | |
def confidence_interval(self, confidence_level=0.95, | |
alternative='two-sided'): | |
""" | |
Confidence interval for the odds ratio. | |
Parameters | |
---------- | |
confidence_level: float | |
Desired confidence level for the confidence interval. | |
The value must be given as a fraction between 0 and 1. | |
Default is 0.95 (meaning 95%). | |
alternative : {'two-sided', 'less', 'greater'}, optional | |
The alternative hypothesis of the hypothesis test to which the | |
confidence interval corresponds. That is, suppose the null | |
hypothesis is that the true odds ratio equals ``OR`` and the | |
confidence interval is ``(low, high)``. Then the following options | |
for `alternative` are available (default is 'two-sided'): | |
* 'two-sided': the true odds ratio is not equal to ``OR``. There | |
is evidence against the null hypothesis at the chosen | |
`confidence_level` if ``high < OR`` or ``low > OR``. | |
* 'less': the true odds ratio is less than ``OR``. The ``low`` end | |
of the confidence interval is 0, and there is evidence against | |
the null hypothesis at the chosen `confidence_level` if | |
``high < OR``. | |
* 'greater': the true odds ratio is greater than ``OR``. The | |
``high`` end of the confidence interval is ``np.inf``, and there | |
is evidence against the null hypothesis at the chosen | |
`confidence_level` if ``low > OR``. | |
Returns | |
------- | |
ci : ``ConfidenceInterval`` instance | |
The confidence interval, represented as an object with | |
attributes ``low`` and ``high``. | |
Notes | |
----- | |
When `kind` is ``'conditional'``, the limits of the confidence | |
interval are the conditional "exact confidence limits" as described | |
by Fisher [1]_. The conditional odds ratio and confidence interval are | |
also discussed in Section 4.1.2 of the text by Sahai and Khurshid [2]_. | |
When `kind` is ``'sample'``, the confidence interval is computed | |
under the assumption that the logarithm of the odds ratio is normally | |
distributed with standard error given by:: | |
se = sqrt(1/a + 1/b + 1/c + 1/d) | |
where ``a``, ``b``, ``c`` and ``d`` are the elements of the | |
contingency table. (See, for example, [2]_, section 3.1.3.2, | |
or [3]_, section 2.3.3). | |
References | |
---------- | |
.. [1] R. A. Fisher (1935), The logic of inductive inference, | |
Journal of the Royal Statistical Society, Vol. 98, No. 1, | |
pp. 39-82. | |
.. [2] H. Sahai and A. Khurshid (1996), Statistics in Epidemiology: | |
Methods, Techniques, and Applications, CRC Press LLC, Boca | |
Raton, Florida. | |
.. [3] Alan Agresti, An Introduction to Categorical Data Analysis | |
(second edition), Wiley, Hoboken, NJ, USA (2007). | |
""" | |
if alternative not in ['two-sided', 'less', 'greater']: | |
raise ValueError("`alternative` must be 'two-sided', 'less' or " | |
"'greater'.") | |
if confidence_level < 0 or confidence_level > 1: | |
raise ValueError('confidence_level must be between 0 and 1') | |
if self._kind == 'conditional': | |
ci = self._conditional_odds_ratio_ci(confidence_level, alternative) | |
else: | |
ci = self._sample_odds_ratio_ci(confidence_level, alternative) | |
return ci | |
def _conditional_odds_ratio_ci(self, confidence_level=0.95, | |
alternative='two-sided'): | |
""" | |
Confidence interval for the conditional odds ratio. | |
""" | |
table = self._table | |
if 0 in table.sum(axis=0) or 0 in table.sum(axis=1): | |
# If both values in a row or column are zero, the p-value is 1, | |
# the odds ratio is NaN and the confidence interval is (0, inf). | |
ci = (0, np.inf) | |
else: | |
ci = _conditional_oddsratio_ci(table, | |
confidence_level=confidence_level, | |
alternative=alternative) | |
return ConfidenceInterval(low=ci[0], high=ci[1]) | |
def _sample_odds_ratio_ci(self, confidence_level=0.95, | |
alternative='two-sided'): | |
""" | |
Confidence interval for the sample odds ratio. | |
""" | |
if confidence_level < 0 or confidence_level > 1: | |
raise ValueError('confidence_level must be between 0 and 1') | |
table = self._table | |
if 0 in table.sum(axis=0) or 0 in table.sum(axis=1): | |
# If both values in a row or column are zero, the p-value is 1, | |
# the odds ratio is NaN and the confidence interval is (0, inf). | |
ci = (0, np.inf) | |
else: | |
ci = _sample_odds_ratio_ci(table, | |
confidence_level=confidence_level, | |
alternative=alternative) | |
return ConfidenceInterval(low=ci[0], high=ci[1]) | |
def odds_ratio(table, *, kind='conditional'): | |
r""" | |
Compute the odds ratio for a 2x2 contingency table. | |
Parameters | |
---------- | |
table : array_like of ints | |
A 2x2 contingency table. Elements must be non-negative integers. | |
kind : str, optional | |
Which kind of odds ratio to compute, either the sample | |
odds ratio (``kind='sample'``) or the conditional odds ratio | |
(``kind='conditional'``). Default is ``'conditional'``. | |
Returns | |
------- | |
result : `~scipy.stats._result_classes.OddsRatioResult` instance | |
The returned object has two computed attributes: | |
statistic : float | |
* If `kind` is ``'sample'``, this is sample (or unconditional) | |
estimate, given by | |
``table[0, 0]*table[1, 1]/(table[0, 1]*table[1, 0])``. | |
* If `kind` is ``'conditional'``, this is the conditional | |
maximum likelihood estimate for the odds ratio. It is | |
the noncentrality parameter of Fisher's noncentral | |
hypergeometric distribution with the same hypergeometric | |
parameters as `table` and whose mean is ``table[0, 0]``. | |
The object has the method `confidence_interval` that computes | |
the confidence interval of the odds ratio. | |
See Also | |
-------- | |
scipy.stats.fisher_exact | |
relative_risk | |
Notes | |
----- | |
The conditional odds ratio was discussed by Fisher (see "Example 1" | |
of [1]_). Texts that cover the odds ratio include [2]_ and [3]_. | |
.. versionadded:: 1.10.0 | |
References | |
---------- | |
.. [1] R. A. Fisher (1935), The logic of inductive inference, | |
Journal of the Royal Statistical Society, Vol. 98, No. 1, | |
pp. 39-82. | |
.. [2] Breslow NE, Day NE (1980). Statistical methods in cancer research. | |
Volume I - The analysis of case-control studies. IARC Sci Publ. | |
(32):5-338. PMID: 7216345. (See section 4.2.) | |
.. [3] H. Sahai and A. Khurshid (1996), Statistics in Epidemiology: | |
Methods, Techniques, and Applications, CRC Press LLC, Boca | |
Raton, Florida. | |
.. [4] Berger, Jeffrey S. et al. "Aspirin for the Primary Prevention of | |
Cardiovascular Events in Women and Men: A Sex-Specific | |
Meta-analysis of Randomized Controlled Trials." | |
JAMA, 295(3):306-313, :doi:`10.1001/jama.295.3.306`, 2006. | |
Examples | |
-------- | |
In epidemiology, individuals are classified as "exposed" or | |
"unexposed" to some factor or treatment. If the occurrence of some | |
illness is under study, those who have the illness are often | |
classified as "cases", and those without it are "noncases". The | |
counts of the occurrences of these classes gives a contingency | |
table:: | |
exposed unexposed | |
cases a b | |
noncases c d | |
The sample odds ratio may be written ``(a/c) / (b/d)``. ``a/c`` can | |
be interpreted as the odds of a case occurring in the exposed group, | |
and ``b/d`` as the odds of a case occurring in the unexposed group. | |
The sample odds ratio is the ratio of these odds. If the odds ratio | |
is greater than 1, it suggests that there is a positive association | |
between being exposed and being a case. | |
Interchanging the rows or columns of the contingency table inverts | |
the odds ratio, so it is import to understand the meaning of labels | |
given to the rows and columns of the table when interpreting the | |
odds ratio. | |
In [4]_, the use of aspirin to prevent cardiovascular events in women | |
and men was investigated. The study notably concluded: | |
...aspirin therapy reduced the risk of a composite of | |
cardiovascular events due to its effect on reducing the risk of | |
ischemic stroke in women [...] | |
The article lists studies of various cardiovascular events. Let's | |
focus on the ischemic stoke in women. | |
The following table summarizes the results of the experiment in which | |
participants took aspirin or a placebo on a regular basis for several | |
years. Cases of ischemic stroke were recorded:: | |
Aspirin Control/Placebo | |
Ischemic stroke 176 230 | |
No stroke 21035 21018 | |
The question we ask is "Is there evidence that the aspirin reduces the | |
risk of ischemic stroke?" | |
Compute the odds ratio: | |
>>> from scipy.stats.contingency import odds_ratio | |
>>> res = odds_ratio([[176, 230], [21035, 21018]]) | |
>>> res.statistic | |
0.7646037659999126 | |
For this sample, the odds of getting an ischemic stroke for those who have | |
been taking aspirin are 0.76 times that of those | |
who have received the placebo. | |
To make statistical inferences about the population under study, | |
we can compute the 95% confidence interval for the odds ratio: | |
>>> res.confidence_interval(confidence_level=0.95) | |
ConfidenceInterval(low=0.6241234078749812, high=0.9354102892100372) | |
The 95% confidence interval for the conditional odds ratio is | |
approximately (0.62, 0.94). | |
The fact that the entire 95% confidence interval falls below 1 supports | |
the authors' conclusion that the aspirin was associated with a | |
statistically significant reduction in ischemic stroke. | |
""" | |
if kind not in ['conditional', 'sample']: | |
raise ValueError("`kind` must be 'conditional' or 'sample'.") | |
c = np.asarray(table) | |
if c.shape != (2, 2): | |
raise ValueError(f"Invalid shape {c.shape}. The input `table` must be " | |
"of shape (2, 2).") | |
if not np.issubdtype(c.dtype, np.integer): | |
raise ValueError("`table` must be an array of integers, but got " | |
f"type {c.dtype}") | |
c = c.astype(np.int64) | |
if np.any(c < 0): | |
raise ValueError("All values in `table` must be nonnegative.") | |
if 0 in c.sum(axis=0) or 0 in c.sum(axis=1): | |
# If both values in a row or column are zero, the p-value is NaN and | |
# the odds ratio is NaN. | |
result = OddsRatioResult(_table=c, _kind=kind, statistic=np.nan) | |
return result | |
if kind == 'sample': | |
oddsratio = _sample_odds_ratio(c) | |
else: # kind is 'conditional' | |
oddsratio = _conditional_oddsratio(c) | |
result = OddsRatioResult(_table=c, _kind=kind, statistic=oddsratio) | |
return result | |