pypmi: An API for the Parkinson’s Progression Markers Initiative (PPMI)¶
The PPMI is an ongoing longitudinal study that begin in early 2010 with the primary goal of identifying biomarkers of Parkinson’s disease (PD) progression. To date, the PPMI has collected data from over 400 individuals with de novo PD and nearly 200 age-matched healthy participants, in addition to large cohorts of individuals genetically at-risk for PD. Data, made available on the PPMI website, include comphrensive clinical-behavioral assessments, biological assays, single-photon emission computed tomography (SPECT) images, and magnetic resonance imaging (MRI) scans.
While accessing this data is straightforward (researchers must simply sign a data usage agreement and provide information on the purpose of their research), the sheer amount of data made available can be quite overwhelming to work with. Thus, the primary goal of this package is to provide a Python interface to making working with the data provided by the PPMI easier.
While this project is still very much under development it is neverthless
functional.
However, please note that this project’s functionality is liable to change
quite dramatically until an initial release is made—so be careful!
Check out our reference API for some of the current capabilities
of pypmi
while our user guide is under construction.
Usage¶
Getting the data¶
First things first: you need to get the data! Once you have access to the PPMI database, log in to the database and follow these instructions:
- Select
Download
from the navigation bar at the top - Select
Study Data
from the options that appear in the navigation bar - Select
ALL
at the bottom of the left-hand navigation bar on the new page - Click
Select ALL tabular data (csv) format
and then pressDownload>>
in the top right hand corner of the page - Unzip the downloaded directory and save it somewhere on your computer
Alternatively, you can use pypmi
module to download the data
programatically:
>>> import pypmi
>>> files = pypmi.fetch_studydata('all', user='username', password='password')
Fetching authentication key for data download...
Requesting 113 datasets for download...
Downloading PPMI data: 17.3MB [00:33, 519kB/s]
By default, the data will be downloaded to your current directory making it
easy to load them in the future, but you can optionally provide a path
argument to pypmi.fetch_studydata()
to specify where you would like
the data to go. (Alternatively, you can set an environmental variable
$PPMI_PATH
to specify where they should be downloaded to; this takes
precedence over the current directory.)
Loading and working with the data¶
Once you have the data downloaded you can use the functions to load various portions of it into tidy data frames.
For example, we can generate a number of clinical-behavioral measures:
>>> behavior = pypmi.load_behavior()
>>> behavior.columns
Index(['participant', 'visit', 'date', 'benton', 'epworth', 'gds',
'hvlt_recall', 'hvlt_recognition', 'hvlt_retention', 'lns', 'moca',
'pigd', 'quip', 'rbd', 'scopa_aut', 'se_adl', 'semantic_fluency',
'stai_state', 'stai_trait', 'symbol_digit', 'systolic_bp_drop',
'tremor', 'updrs_i', 'updrs_ii', 'updrs_iii', 'updrs_iii_a', 'updrs_iv',
'upsit'],
dtype='object')
The call to pypmi.load_behavior()
may take a few seconds to
run—there’s a lot of data to import and wrangle!
If we want to query the data with regards to, say, subject diagnosis it might be useful to load in some demographic information:
>>> demographics = pypmi.load_demographics()
>>> demographics.columns
Index(['participant', 'diagnosis', 'date_birth', 'date_diagnosis',
'date_enroll', 'status', 'family_history', 'age', 'gender', 'race',
'site', 'handedness', 'education'],
dtype='object')
Now we can perform some interesting queries! As an example, let’s just ask how many individuals with Parkinson’s disease have a baseline UPDRS III score. We’ll have to use information from both data frames to answer the question:
>>> import pandas as pd
>>> updrs = (behavior.query('visit == "BL" & ~updrs_iii.isna()')
... .get(['participant', 'updrs_iii']))
>>> parkinsons = demographics.query('diagnosis == "pd"').get('participant')
>>> len(pd.merge(parkinsons, updrs, on='participant'))
423
And the same for healthy individuals:
>>> healthy = demographics.query('diagnosis == "hc"').get('participant')
>>> len(pd.merge(healthy, updrs))
195
There’s a lot of power gained in leveraging the pandas DataFrame objects, so take a look at the pandas documentation to see what more you can do!
Reference API¶
This is the primary reference of pypmi
. Please refer to the user
guide for more information on how to best implement these functions in
your own workflows.
pypmi
- Dataset fetchers and loaders¶
Functions for listing and downloading datasets from the PPMI database:
fetchable_studydata () |
Lists study data available to download from the PPMI |
fetchable_genetics (projects) |
Lists genetics data available to download from the PPMI |
fetch_studydata (*datasets, path, user, …) |
Downloads specified study data datasets from the PPMI database |
fetch_genetics (*datasets, path, user, …) |
Downloads specified genetics data datasets from the PPMI database |
Functions for loading data from PPMI database into tidy dataframes:
load_behavior (path, measures) |
Loads clinical-behavioral data into tidy dataframe |
load_biospecimen (path, measures) |
Loads biospecimen data into tidy dataframe |
load_datscan (path, measures) |
Loads DaT scan data into tidy dataframe |
load_demographics (path, measures) |
Loads demographic data into tidy dataframe |
Functions for listing measures available from relevant pypmi.load_X()
commands:
available_behavior (path) |
Lists measures available in pypmi.load_behavior() |
available_biospecimen (path) |
Lists measures available in pypmi.load_biospecimen() |
available_datscan (path) |
Lists measures available in pypmi.load_datscan() |
available_demographics (path) |
Lists measures available in pypmi.load_demographics() |