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license: mit
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# Description
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Binary Localization prediction is a binary classification task where each input protein *x* is mapped to a label *y* ∈ {0, 1}, corresponding to either "membrane-bound" or "soluble" .
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The digital label means:
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0: membrane-bound
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1: soluble
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# Splits
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**Structure type:** AF2
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The dataset is from [**DeepLoc: prediction of protein subcellular localization using deep learning**](https://academic.oup.com/bioinformatics/article/33/21/3387/3931857). We employ all proteins (proteins that lack AF2 structures are removed), and split them based on 70% structure similarity (see [ProteinShake](https://github.com/BorgwardtLab/proteinshake/tree/main)), with the number of training, validation and test set shown below:
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- Train: 6707
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- Valid: 698
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- Test: 807
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# Data format
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We organize all data in LMDB format. The architecture of the databse is like:
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**length:** The number of samples
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**0:**
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- **name:** The UniProt ID of the protein
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- **seq:** The structure-aware sequence
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- **
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**···**
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---
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license: mit
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+
---
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+
# Description
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Binary Localization prediction is a binary classification task where each input protein *x* is mapped to a label *y* ∈ {0, 1}, corresponding to either "membrane-bound" or "soluble" .
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| 6 |
+
|
| 7 |
+
The digital label means:
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+
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+
0: membrane-bound
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+
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+
1: soluble
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+
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+
# Splits
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+
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**Structure type:** AF2
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+
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+
The dataset is from [**DeepLoc: prediction of protein subcellular localization using deep learning**](https://academic.oup.com/bioinformatics/article/33/21/3387/3931857). We employ all proteins (proteins that lack AF2 structures are removed), and split them based on 70% structure similarity (see [ProteinShake](https://github.com/BorgwardtLab/proteinshake/tree/main)), with the number of training, validation and test set shown below:
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+
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- Train: 6707
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+
- Valid: 698
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- Test: 807
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+
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# Data format
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+
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We organize all data in LMDB format. The architecture of the databse is like:
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+
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**length:** The number of samples
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+
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**0:**
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+
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- **name:** The UniProt ID of the protein
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+
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- **seq:** The structure-aware sequence
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- **label:** classification label of the sequence
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**1:**
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**···**
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