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+# Data structures
+
+## Groups
+
+In GN datasets are organised in groups. On the main menu you can see
+BXD datasets are grouped into BXD aged hippocampus or BXD bone studies
+reflecting higher level interests. Groups are formed around a strain
+(here BXD) and are linked to experiments, or sample lists.
+A group, family, cohort, population is almost always a set of N cases or
+individuals or isogenic animals treated as "individuals". The BXD family
+of strains is a good and complex example. We can treat the 100+ BXD strains
+as if they were 100 "genetic" individuals and collapse traits for 10
+animals each into one value with an error term. Or we can treat all 100 x
+10 animals as actual individuals. Even though we use the same animals in
+both cases, they are treated in GN as two separate GROUPS.
+
+From a computational perspective a GROUP is a set that can be used to
+compute correlations among traits. Coming back to the two BXD groups (N =
+100 strain means; or N = 1000 individuals), we can only
+compute correlations within either mean data or individual data.
+
+Groups are maintained in the inaptly named 'InbredSet' table. E.g.
+
+```
+MariaDB [db_webqtl]> select * from InbredSet limit 3;
++----+-------------+-------------------+--------+-----------+-------------------+--------+-----------------+-------------+--------------------------------------------------+-------------+-------------+---------------+
+| Id | InbredSetId | InbredSetName | Name | SpeciesId | FullName | public | MappingMethodId | GeneticType | Family | FamilyOrder | MenuOrderId | InbredSetCode |
++----+-------------+-------------------+--------+-----------+-------------------+--------+-----------------+-------------+--------------------------------------------------+-------------+-------------+---------------+
+| 1 | 1 | BXD | BXD | 1 | BXD Family | 2 | 1 | riset | Reference Populations (replicate average, SE, N) | 1 | 0 | BXD |
+| 2 | 2 | B6D2F2 OHSU Brain | B6D2F2 | 1 | B6D2F2 OHSU Brain | 2 | 1 | intercross | Crosses, AIL, HS | 3 | 0 | NULL |
+| 4 | 4 | AXB/BXA | AXBXA | 1 | AXB/BXA Family | 2 | 1 | NULL | Reference Populations (replicate average, SE, N) | 1 | 0 | AXB |
++----+-------------+-------------------+--------+-----------+-------------------+--------+-----------------+-------------+--------------------------------------------------+-------------+-------------+---------------+
+3 rows in set (0.000 sec)
+```
+
+## What is a trait?
+
+A trait is a vector of floats or integers for a GROUP. Body weight
+is a simple example of a trait. Eye color, if coded numerically, is a
+trait.
+
+A trait will usually have metadata, but the trait data itself boils
+down to single vector of values for a specific group that can be used
+to compute univariate statistics, (means, variances, etc),
+correlations between traits within a group, maps of trait variance for
+that group, and higher order properties. A trait could be a vector of
+more complex numerical types than just scalars. But up to now all
+traits that we have mapped or studied in GN are just simple vectors of
+numbers.
+
+Traits can also be genotypes that are coded as integers (usually). Some
+genotypes are coded as floats if genotype probabilities.
+
+In GeneNetwork a single trait value (a scalar) always belongs to a
+genetically-defined unit/case/individual/clone/strain/F1 hybrid. A single
+trait vector (what I usually mean when I talk about a trait) always belongs
+to at least one GROUP.
+
+A trait vector can belong to multiple Groups if the groups overlap in
+membership. For example, the rat Hybrid Rat Diversity Population (HRDP)
+consists of the HXB family, the LEXF family, and a bunch of other inbred
+rat strains. HRDP traits can therefore be split into subgroups. This is a
+pain from a programming perspective, since a data matrix of TRAITS-by-GROUP
+may be a sparse matrix. And the GUI become more complex, since the user may
+want to slice and dice the GROUP in multiple ways, for example—just map the
+HXB family, just map the LEXF family, or map everything together.
+
+## Case attributes
+
+Case attributes, such as body weight or gene expression, are
+"strain/sample metadata" at the group level. All traits within a group
+share the same sample list. The other way, case attribute are
+connected to samples within a group.
+
+An attribute can be any trait as defined above, or it can be a short
+alphanumeric code used primarily as a cofactor in analysis. Sex is a good
+example of an attribute that can be coded as an integer (0 or 1 or
+x=unknown) and used computationally as if it were any other trait, or it
+can be coded as M and F and use for display and as a cofactor. But some
+attributes are not even cofactors. For example, an Attribute column may
+define which strains or cases were used in Study X by Roy et al in 2021. In
+this situation, the GUI and the attribute are used to quickly sort or
+select or exclude particular cases.
+
+Attributes are a recent addition to GeneNetwork. The motivation was to
+provide the user with a display of the most important cofactors of a
+study. For example, in our large study of lifespan in the BXD mice,
+we wanted to provide "low level" data on each individual animal.
+
+In this situation, the sex, strain, diet, aar tag number, resource
+reference ID, the epoch of the BXD strain (when the BXD strain was made),
+and even the study in which cases were specifically used—all of those are
+considered attributes.
+
+The last three attribute columns that you see in the screenshot below
+(KM20, SR21, EW21) refer to three papers (e.g. SR21 = Suheeta Roy 2021)
+that have used subsets of these animals. None of these attributes are used
+directly in computations. They are used to sort and filter. But notice that
+one of these ATTRIBUTES is also the most important trait in this study—the
+Longevity column attribute is the same as the VALUE (Trait BDL_10001). This
+highlights the fact that a trait can become an attribute, but not all
+attributes can become traits. Who would compute a correlation against ear
+tag number?
+
+=> https://genenetwork.org/show_trait?trait_id=10001&dataset=BXD-LongevityPublish
+
+Attributes generally belong to a GROUP, not to an individual TRAIT. But
+for display purposes, every trait will show a set of ATTRIBUTES. This is a
+source of potential confusion.
+
+Who can edit case attributes? Attributes should only be editable by
+the GROUP owner or perhaps by GeneNetwork curators.
+
+How do we make sure we can compare attributes between datasets if the
+naming is haphazard? Attributes are only a GROUP property (e.g. BXD
+Family, AKXD Family, GTEx). The way I think about them today, they
+cannot be used computationally across GROUPS. They can be used across
+traits within GROUPS.
+
+Can we have global case attributes? We could have shared vocabulary
+for attributes, but I do not know how a global case attribute would be
+used computationally. For example, sex, age, body weight, lab
+identifiers, date of analysis, will almost always be useful attributes
+(and also some of those are traits) no matter what the GROUP, provided
+the GROUP consists of true individuals. So a common vocabulary of
+ATTRIBUTES make great sense, but computationally ATTRIBUTES as I think
+about them today, belong just to a group (or overlapping set of
+groups).
+
+However, it would be cool to compare differences in gene expression in
+the liver of BXD mice, HXD rats, and GTEx humans as a function of sex
+and age.
diff --git a/features/index.md b/features/index.md
index 093ba4f..19017ce 100644
--- a/features/index.md
+++ b/features/index.md
@@ -6,6 +6,7 @@ In this section we describe GN features:
## Topics
+1. [Data structures](data-structures.md)
1. [Search](search.md) for genes, QTL, SNPs, etc.
1. Available datasets and annotation
1. Selecting and filtering data
@@ -19,7 +20,7 @@ In this section we describe GN features:
6. Phenome-wide association mapping: Getting at pleiotropy
7. Bayesian Network Webserver in GN
8. Collections and sharing
-9. Mutlifamily and multispecies data comparison and integration
+9. Multifamily and multispecies data comparison and integration
10. Connecting other services, such as Webgestalt, GeneWeaver
11. Upload, review and edit data
12. Experimental design and power calculations