pygrowup calculates z-scores for the following anthropometric indicators:
-
weight-for-age
-
length/height-for-age
-
weight-for-length/height
-
head-circumference-for-age
-
body-mass-index-for-age
based on the WHO Child Growth Standards:
- http://www.who.int/childgrowth/standards/en/
- http://www.who.int/entity/childgrowth/standards/technical_report/en/index.html
and can optionally use CDC growth standards:
pygrowup avoids floating-point operations to eliminate the unwanted rounding that muddles the precision of some of the igrowup implementations:
thanks to GlobalStrategies for a JavaScript port!
- https://github.com/GlobalStrategies/jsgrowup
- published on npm as jsgrowup: https://www.npmjs.com/package/jsgrowup
- Python 2.7.x, Python 3.x or later
- Additionally requires https://pypi.python.org/pypi/six
pip install pygrowup
Typical usage might look like this::
#!/usr/bin/env python
from pygrowup import Calculator
# helpers contains optional utilities for formatting dates, etc
from pygrowup import helpers
# Height adjustments are part of the WHO specification (see section 5.1)
# to correct for recumbent vs standing measurements,
# but none of the existing software seems to implement this.
# default is false so values are closer to those produced
# by igrowup software
#
# WHO specs include adjustments (see Chapter 7) to z-scores of weight-based
# indicators that are greater than +/- 3 SDs. These adjustments
# correct for right skewness and avoid making assumptions about
# the distribution of data beyond the limits of the observed values.
#
# However, when calculating z-scores in a live data collection
# situation, z-scores greater than +/- 3 SDs are likely to indicate
# data entry or anthropometric measurement errors and should not
# be adjusted. Instead, these large z-scores should be used to
# identify poor data quality and/or entry errors.
# These z-score adjustments are appropriate only when there
# is confidence in data quality.
#
# In this example, Calculator is initialized with its default values
# (i.e., ``calculator = Calculator()`` would do the same thing).
# The ``include_cdc`` option will enable CDC measurements for children >5 years.
calculator = Calculator(adjust_height_data=False, adjust_weight_scores=False,
include_cdc=False, logger_name='pygrowup',
log_level='INFO')
# for a timeless example, lets pick a birthdate nine months ago
import datetime
great_day = datetime.datetime.utcnow().date()
nine_months_ago = great_day - datetime.timedelta(days=(9 * 30.4374))
# nine months ago in an odd, ambiguous string format
dob = nine_months_ago.strftime("%d%m%y")
my_child = {'date_of_birth' : dob, 'sex' : 'male', 'weight' : '8.0', 'height' : '69.5'}
# optionally use helper functions for formatting data
# transform something like '100309' into '2009-03-10'
valid_date = helpers.get_good_date(my_child['date_of_birth'])
# transform 'male' into 'M'
valid_gender = helpers.get_good_sex('male')
# calculate 9 months from valid_date
valid_age = helpers.date_to_age_in_months(valid_date[1])
# calculate length/height-for-age zscore
lhfa_zscore_for_my_child = calculator.lhfa(my_child['height'], valid_age, valid_gender)
# calculate weight-for-age zscore
wfa_zscore_for_my_child = calculator.wfa(my_child['weight'], valid_age, valid_gender)
# calculate weight-for-length zscore
# optional height parameter is only necessary for weight-for-height
# and weight-for-length
wfl_zscore_for_my_child = calculator.wfl(my_child['weight'], valid_age, valid_gender, my_child['height'])
# Note: for backwards compatibility you may still make calls to:
wfl_zscore_for_my_child = calculator.zscore_for_measurement('wfl', my_child['weight'], valid_age, valid_gender, my_child['height'])
caller should watch for:
AssertionError
raised when caller provides inappropriate parameters
as well as more specific errors (all subclasses of RuntimeError
):
-
InvalidMeasurement
raised when measurement is invalid for requested indicator -
InvalidAge
raised when age is invalid for requested indicator -
DataNotFound
raised when WHO/CDC data is not found for the requested observation (e.g., box-cox, median, coeffeciant of vairance for age) -
DataError
raised when an error occurs while loading WHO/CDC data into memory
install nose to execute tests:
pip install nose
the included tests use example anthropometric data taken from demonstration data shipped with WHO's igrowup software. pygrowup performs the same calculations and compares the results to the WHO results. please see the sofware licence agreement for WHO's igrowup, which is the souce of the test data files: http://www.who.int/childgrowth/software/license2.pdf
currently, 4 cases fail to produce results within 1 standard deviation of the WHO resuts. I believe these discrepencies are due to WHO's use of floating point arithmetic in their igrowup software, which leads to less precise calculations compared to pygrowup. In the absence of any other trusted test data, please be aware that no claims are made to the accuracy or reliability of pygroup's calculations.
to run the tests:
$ nosetests tests.py
The source WHO .txt tables can be easily converted to json with the help of two amazing python utilities:
-
The Pyed Piper https://code.google.com/p/pyp/
heres an example one-liner that changes the source .txt from tsv
to csv (with pyp
) and then to json (with csvkit's csvjson
)
$ cat bmi_girls_2_5_zscores.txt | pyp "p.replace('\t', ',')" | csvjson > bmifa_girls_2_5_zscores.json