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SoftDis / README.md
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---
configs:
- config_name: default
data_files: default/data.parquet
- config_name: clusters
data_dir: clusters
- config_name: clusters-all
data_dir: clusters-all
- config_name: id05
data_files:
- split: train
path: splits/id05/train.parquet
- split: validation
path: splits/id05/valid.parquet
- split: test
path: splits/id05/test.parquet
- config_name: id07
data_files:
- split: train
path: splits/id07/train.parquet
- split: validation
path: splits/id07/valid.parquet
- split: test
path: splits/id07/test.parquet
- config_name: id09
data_files:
- split: train
path: splits/id09/train.parquet
- split: validation
path: splits/id09/valid.parquet
- split: test
path: splits/id09/test.parquet
---
# SoftDis dataset
SoftDis is a dataset for the exploration of disordered regions in
protein structures, and their relations with interacting sites.
The concept of soft disorder was introduced in [(Seoane and Carbone, 2021)](https://www.google.com/url?sa=t&source=web&rct=j&opi=89978449&url=https://journals.plos.org/ploscompbiol/article%3Fid%3D10.1371/journal.pcbi.1008546&ved=2ahUKEwj43OOAmISLAxW4UKQEHRszOaIQFnoECBQQAQ&usg=AOvVaw1YXiijzojYENeuv-rxtzLD),
as a general term for regions in a protein identified as flexible
(characterized by high B-factor) or intermittently missing across different
X-ray crystal structures of the same sequence. The definition is derived from
an extensive analysis of clusters of alternative structures for very similar
protein sequences in the Protein Data Bank (PDB).
The current version of the dataset is based on the structures in the PDB up to 15-10-2024.
## Dataset construction
To construct the SoftDis database, we retrieved protein
structures from the PDB archive
and clustered sequences using MMSeqs2 [(Steinegger and Söding,2017)](https://www.nature.com/articles/nbt.3988) at 90% sequence identity and 90% coverage.
This process yielded 64,285 clusters encompassing a total
of 484,044 chains, belonging to 229,376 structures. The average
number of structures per cluster is 7.53, with a median of 3.
Nearly half of the clusters (31,412) contain only 1 or 2 sequences,
while the largest cluster includes 1,727 homologs.
The representative chain for each cluster was selected from the
experimental structure with the highest resolution or best R-value.
For protein complexes, individual chains were analyzed separately
and assigned to their respective clusters.
Residues in each chain were labeled as missing if annotated
under REMARK 465 in the PDB file. A residue was classified
as soft disordered if it was either missing or had a normalized
B-factor $b_i = (B_i − B)/σ_B > 3$, where $B_i$ represents the B-
factor of the Cα atom, and $B$ and $σ_B$ are the mean and standard
deviation of $B_i$ values within the chain. Additionally, residues
were labeled as interface if they participated in protein-protein
or protein-DNA/RNA interactions. Protein-protein binding sites
were identified using the INTerface Builder tool [(Dequeker et al.,2017)](https://pubs.acs.org/doi/full/10.1021/acs.jcim.7b00360),
where residue contacts are defined by Cα atoms within
5 Å. Protein-DNA/RNA binding sites were determined as residues
showing decreased accessible surface area, measured using [Naccess](http://www.bioinf.manchester.ac.uk/naccess/)
(Hubbard and Thornton, 1993) with a 1.4 Å probe, upon binding.
For each site in the representative sequence of a cluster, we
recorded the number of times it was labeled as soft disordered
across all chains in the cluster, excluding sites consistently labeled
as missing. Similarly, we noted the number of times each site was
labeled as interface.
## Usage
Data for different configurations can be loaded using HuggingFace `datasets` library with the following script:
```python
from datasets import load_dataset
dataset = load_dataset("CQSB/SoftDis", name=config_name)
```
The function returns a `datasets.DatasetDict` object, whose items can be accessed by specifying the corresponding split, as in the following
```python
# Assign splits to different datasets.Dataset objects
train_data, val_data, test_data = load_dataset("CQSB/SoftDis", "id05")
# Load default `train` split
train_data = load_dataset("CQSB/SoftDis", split="train")
# Access `train` split after loading
data = load_dataset("CQSB/SoftDis", "id05")
train_data = data['train']
```
### Available configurations
Available configurations are specified in the dataset metadata. We report details about each of them in the following table:
| Name | Splits | Num. samples | Description |
|------|--------|--------------|-------------|
| default | `train` | 64,285 | Summary data for all clusters |
| id05 | `train`, `validation`, `test` | 26,752 \| 1,155 \| 2,523 | Clusters data filtered at 50% identity |
| id07 | `train`, `validation`, `test` | 32,287 \| 1,146 \| 2,250 | Clusters data filtered at 70% identity |
| id09 | `train`, `validation`, `test` | 38,253 \| 1,068 \| 2,282 | Clusters data filtered at 90% identity |
| clusters-all | `train` | 484,044 | Detailed info for all chains in each cluster (archive) |
| clusters | `train` | 484,044 | Detailed info for all chains in each cluster (single files) |
If `config_name` is not specified, default data are loaded.
To load data for all chains, `clusters-all` configuration is recommended, since it only downloads and decompresses a single file (2.66 GB compressed). After the first download and loading, that might take some minutes, the dataset is cached locally on disk using [Arrow](https://arrow.apache.org/) framework. When needed, the cached dataset is memory-mapped directly from the disk (which offers fast lookup) instead of being loaded in memory. For more information, visit this [link](https://huggingface.co/docs/datasets/about_arrow).
`cluster` configuration can instead be useful to inpect information about one or few clusters, without the need to download the full database. Necessary files can be loaded with the following syntax:
```python
dataset = load_dataset(
"CQSB/SoftDis", "clusters", data_files="clusters/train/*/4zne_E.parquet"
)
```
Each cluster is stored as `<cluster_id>.parquet` file in a subdirectory of `clusters/train` directory. The name of the subirectory corresponds to the first 2 symbols of `<cluster_id>` (in the example, `4z`), but `*` wildcard can be also used.
## Dataset Structure
### Data instances
A sample item for configurations `default`, `id05`, `id07`, `id09` has the following features:
- 'id': Value(dtype='string'): cluster identifier
- 'sequence': Value(dtype='string'): protein sequence for cluster representative
- 'homologs': Sequence(feature=Value(dtype='string')): chain IDs contained in the cluster
- 'num_homologs': Value(dtype='int64'): number of chains in the cluster
- 'missing_frequency': Sequence(feature=Value(dtype='float32')): fraction of missing residues in the cluster for each position
- 'soft_disorder_frequency': Sequence(feature=Value(dtype='float32')): fraction of soft-disordered residues in the cluster for each position
- 'protein_interface_frequency': Sequence(feature=Value(dtype='float32')): fraction of residues in the cluster in a protein-protein interface for each position
- 'nucleic_acid_interface_frequency': Sequence(feature=Value(dtype='float32')): fraction of residues in the cluster in a protein-DNA/RNA interface for each position
- 'interface_frequency': Sequence(feature=Value(dtype='float32')): union of protein-protein and protein-DNA/RNA interfaces
To convert frequencies to binary labels for classification tasks, the best option is to process data with `map()` method (see documentation [here](https://huggingface.co/docs/datasets/process#map)):
```python
# Assign positive label to soft-disordered residues
def binarize(sample):
sample["soft_disorder_class"] = (
sample["soft_disorder_frequency"] > 0
).astype(np.int64)
return sample
dataset.set_format(type="numpy") # convert items to numpy objects
dataset = dataset.map(binarize) # apply function to all entries
```
A sample for configurations `clusters` or `clusters-all` has instead the following features:
- 'id': Value(dtype='string'): chain identifier
- 'sequence': Value(dtype='string'): chain sequence
- 'missing': Sequence(feature=Value(dtype='bool')): boolean list of missing residues
- 'soft_disorder': Sequence(feature=Value(dtype='bool')): boolean list of soft-disordered residues
- 'protein_interface': Sequence(feature=Value(dtype='bool')): boolean list of residues at protein-protein interface
- 'nucleic_acid_interface': Sequence(feature=Value(dtype='bool')): boolean list of residues at protein-DNA/RNA interface
- 'bfactors': Sequence(feature=Value(dtype='float64')): list of B-factor for each residue (Cα atom)
- 'residue_ids': Sequence(feature=Value(dtype='string')): list of residue identifiers, as reported in PDB file
- 'coords': Sequence(feature=Sequence(feature=Value(dtype='float64', id=None))): L x 3 array with Cα coordinates. Coordinates of missing residues are set to NaN.