On Wed, Mar 4, 2015 at 12:01 PM, Robert Castelo <robert.castelo at upf.edu>
wrote:
It is true that there are connections between the concerns But the way I
see it, the container design we
are talking about in this thread addresses the management of a fixed
common assay type over a fixed set of samples.
The biocMultiAssay deals with the management of multiple assay types over
multiple samples, with possible
disparities in sample sets over the different assay types.
robert.
On 03/04/2015 05:16 PM, Tim Triche, Jr. wrote:
Oh, I don't disagree. Perhaps the two problems can be addressed
simultaneously by
1) deciding on what contracts a multi-assay container can/would demand to
be useful
2) calling it something besides SummarizedExperiment, say,
ExperimentCollection
Then the SE API could stay the same as it is (which is already very
useful)
and progress could be sought in the offshoot (ExperimentCollection or
whatever) without breaking things that rely on SE.
Just off the top of my head, a most generically useful container for DNA
methylation& CNV data (which can of course be called from the same
assay)
is Kasper& JP's GenomicRatioSet, which already has some weird quirks for
eSet backwards compatibility. (e.g. sampleNames(x) works, but
sampleNames(x)<- does not work; pData(x) calls colData(x); fData(x) calls
rowData(x)) There are little niggles that I should probably just send
in a
patch for, but a cleaner overall container would be better, if for no
other
reason than the aforementioned ability to easily experiment with
imputation. An approach that I've been using is to stuff the SNPs, CNV
(as
GRanges) and mRNA/miRNA (as a matrix) data into exptData(SE). This is...
somewhat less than optimal, especially when subsetting.
But it does suggest that I could define a coercion from the current
rambling wreck into a nice clean new class/API (ExperimentCollection or
whatever) and I'll bet other package authors could, too. The presence
of a
GRangesFrame would then be handy for returning a given assay's results,
so
that the user could be blissfully ignorant of the storage backing (ff,
BigMatrix, Matrix, matrix, Rle, whatever) but not lose the data
management
advantages of a SummarizedExperiment.
JMHO
Statistics is the grammar of science.
Karl Pearson<http://en.wikipedia.org/wiki/The_Grammar_of_Science>
On Wed, Mar 4, 2015 at 6:40 AM, Vincent Carey<stvjc at channing.harvard.edu
wrote:
I am a bit concerned about any major alterations to the
SummarizedExperiment API. We have
two papers and plenty of working code that use it in meaningful ways.
Effort required to keep new
formulations back-compatible as well as bug-free has to be weighed
seriously.
I agree that the name is not ideal. We are learning as we go.
Seems to make sense to start with the contracts we want the instances
of
a class to satisfy. I have long felt
that X[i, j] idiom is one users and developers should be comfortable
with,
even insist on, and for consistency
with matrix operations idiom, it should work in a natural way for
numeric
indexing. This seems like an important
constraint. subsetBy* is a useful idiom, but it is conceivable that we
would adopt filter() for row-oriented selections
and select() for column-oriented selections. Do we have to make any
special design considerations to allow
very smooth interoperation with out-of-memory resources for certain
components for developers who want to allow this?
We should have a reasonable way to get data on what is out there, what
is used, how it is most effectively used.
What's the SE API? Is it well-adapted to requirements of DESeq2? Other
killer packages that use/don't use it?
Even getting data on the formal API for a class is not all that
familiar.
And if folks are writing non-S4 interfaces (i.e., naked
functions) we have no way of identifying them. See below for one way of
discovering the API for SummarizedExperiment.
In summary, I think we have to be careful about overdesigning too
early. Getting clear on contracts seems the best
way to ensure reuse, and we really want that so that reliability is
continually assessed. My sense is that it is good
to give developers something they'll gladly extend, not necessarily
reuse
directly. So we don't have to have
broad consensus on class details, but on the minimal abstraction and on
obligatory tests on its basic implementation.
methods(class="SummarizedExperiment") # perhaps an obsolete version
methods cataloguer by MTM
DataFrame with 76 rows and 3 columns
generic
signature package
<character>
<character> <character>
1 [ x="SummarizedExperiment", i="ANY",
j="ANY", drop="ANY" base
2 [ x="SummarizedExperiment", i="ANY",
j="missing", value="ANY" base
3 [ x="SummarizedExperiment",
i="ANY", j="missing" base
4 [<- x="SummarizedExperiment", i="ANY", j="ANY",
value="SummarizedExperiment" base
5 assay
x="SummarizedExperiment", i="character" GenomicRanges
... ...
... ...
72 updateObject
object="SummarizedExperiment" BiocGenerics
73 values
x="SummarizedExperiment" S4Vectors
74 values<-
x="SummarizedExperiment" S4Vectors
75 width
x="SummarizedExperiment" BiocGenerics
76 width<-
x="SummarizedExperiment" BiocGenerics
On Wed, Mar 4, 2015 at 8:32 AM, Hector Corrada Bravo<hcorrada at gmail.com
wrote:
May I advocate for 'IndexedDataFrame' or 'IndexedFrame'? 'rowIndices'
can
return whatever makes sense (GRanges, or other data structures
-thinking
taxonomy for metagenomics for example-). GRangesFrame can inherit from
this.
On Wed, Mar 4, 2015 at 3:28 AM, Herv? Pag?s<hpages at fredhutch.org>
wrote:
GRangesFrame is an interesting idea and I gave it some thoughts.
There is this nice symmetry between GRanges and GRangesFrame:
- GRanges = a naked GRanges + a DataFrame accessible via mcols()
- GRangesFrame = a DataFrame + a naked GRanges accessible via
some accessor (e.g. rowRanges())
So GRanges and GRangesFrame are equivalent in terms of what they
can hold, but different in terms of API: the former has the ranges
API as primary API and the DataFrame API on its mcols() component,
and the latter has the DataFrame API as primary API and the ranges
API on its rowRanges() component. Nice switch!
What does this API switch bring us? A GRangesFrame object is now
an object that fully behaves like a DataFrame and people can also
perform range-based operations on its rowRanges() component.
Here is what I'm afraid is going to happen: people will also want
to be able to perform range-based operations *directly* on
these objects, i.e. without having to call rowRanges() first.
So for example when they do subsetByOverlaps(), subsetting
happens vertically. Also the Hits object returned by findOverlaps()
would contain row indices. Problem with this is that these objects
now start to suffer from the "dual personality syndrome". For
example, it's not clear anymore what their length should be.
Strictly speaking it should be their number of columns (that's
what the length of a DataFrame is), but the ranges API that
we're trying to put on them also makes them feel like vectors
along the vertical dimension so it also feels that their length
should be their number of rows. Same thing with 1D subsetting.
Why does it subset the columns and not the rows? Most people
are now confused.
It's interesting to note that the same thing happens with GRanges
objects, but in the opposite direction: people wish they could
do DataFrame operations directly on them without calling mcols()
first. But in order to preserve the good health of GRanges objects,
we've not done that (except for $, a shortcut for mcols(x)$,
the pressure was just too strong).
H.
On 03/03/2015 04:35 PM, Michael Lawrence wrote:
Should be possible for the annotations to be of any type, as long as
satisfy a simple contract of NROW() and 2D "[". Then, you could have a
DataFrame, GRanges, or whatever in there. But it would be nice to
have
special class for the container with range information. The contract
the range annotation would be to have a granges() method.
I agree it would be nice if there was a way with the methods package
to
easily assert such contracts. For example, one could define an
with a set of generics (and optionally the relevant position in the
generic
signature). Then, once all of the methods have been assigned for a
particular class, it is made to inherit from that contract class.
There
are
lots of gotchas though. Not sure how useful it would be in practice.
On Tue, Mar 3, 2015 at 4:07 PM, Peter Haverty<haverty.peter at gene.com
wrote:
There are some nice similarities in these new imaginary types. A
"GRangesFrame" is a list of dimensionally identical things (columns)
some row meta-data (the GRanges). The SE-like object is similarly a
of dimensionally like things (matrices, RleDataFrames, BigMatrix
HDF5-backed things) with some row meta-data (a DataFrame or
GRangesFrame).
Elegant? Maybe they would actually be relatives in the class tree.
I wonder if this kind of thing would be easier if we had Java-style
Interfaces or duck-typing. The "x" slot of "y" holds something that
implements this set of methods ...
Oh, and kinda apropos, the genoset class will probably go away or
an extension to this new SE-like thing. The extra stuff that comes
with genoset will still be available.