soma is a modular framework to streamline computational pathology research.
📖 Documentation · 📦 PyPI
It provides a unified API to go from a dataset of slides and labels to a full, reproducible result report. Along the way, it makes it easy to sweep core design choices such as preprocessing (spacing, field-of-view), encoding (foundation models), and aggregation (MIL) so you can quickly find the strongest configuration for your data.
You can use it either as a full end-to-end pipeline or as a set of composable building blocks for custom experiment orchestration.
pip install soma-pathologyThe PyPI distribution is soma-pathology; the import package and CLI remain soma.
The package root exports the main entry points:
DatasetandSplitsfor loading dataFeatureExtractorfor preprocessing slides and extracting embeddingstrain()andtrain_one_fold()for training directly from featuresPipelinefor the full preprocessing + feature extraction + training workflow
dataset.csv should contain one row per slide with at least sample_id, image_path, and label. sample_id must be unique, image_path should point to the slide file, and label can be either a string class name or an integer target.
splits.csv should assign each sample_id to train, tune, or a test* split for every fold. Each fold must contain at least one test split. This is what keeps evaluation reproducible and prevents leakage.
from soma import Dataset, Splits
dataset = Dataset("dataset.csv")
splits = Splits("splits.csv", dataset)
print(len(dataset.sample_ids))
print(sorted({s.label for s in dataset.samples.values()}))
print(splits.num_folds)FeatureExtractor handles preprocessing and embedding extraction. The cache lets you reuse the same extracted features across multiple training runs, which is especially useful when comparing several MIL aggregators or heads against the same encoder output.
from soma import Dataset, Splits, FeatureExtractor, train
from soma import CacheConfig, EncoderConfig, AggregatorConfig, TaskConfig, TrainingConfig
# Extract features once
dataset = Dataset("dataset.csv")
extractor = FeatureExtractor(
dataset=dataset,
encoder=EncoderConfig(name="uni2"),
output_root="output",
cache=CacheConfig(enabled=True, root_dir="shared/feature_cache"),
)
store = extractor.extract(feature_dir="output/features/uni2")
# Train multiple model variants on the same features
splits = Splits("splits.csv", dataset)
task = TaskConfig(name="binary_classification")
abmil_result = train(
feature_store=store,
dataset=dataset,
splits=splits,
aggregator=AggregatorConfig(name="abmil", params={"hidden_dim": 256}),
task=task,
training=TrainingConfig(learning_rate=1e-4, epochs=50),
run_dir="output/abmil/uni2",
)
clam_result = train(
feature_store=store,
dataset=dataset,
splits=splits,
aggregator=AggregatorConfig(name="clam_sb", params={"hidden_dim": 256, "attn_dim": 128}),
task=task,
training=TrainingConfig(learning_rate=1e-4, epochs=50),
run_dir="output/clam_sb/uni2",
)Pipeline(config).run() handles preprocessing, feature extraction, training across folds, and metric aggregation in a single call.
from soma import Pipeline, PipelineConfig
from soma import EncoderConfig, AggregatorConfig, TaskConfig, TrainingConfig
config = PipelineConfig(
dataset_csv="dataset.csv",
splits_csv="splits.csv",
output_root="output",
dataset_type="slide",
encoder=EncoderConfig(name="uni2"),
aggregator=AggregatorConfig(name="abmil", params={"hidden_dim": 256}),
task=TaskConfig(name="binary_classification"),
training=TrainingConfig(learning_rate=1e-4, epochs=50),
)
result = Pipeline(config).run()The returned PipelineResult includes:
fold_results: one entry per fold, each with training, tune, and test reportssummary: aggregated metrics across foldsrun_dir: the resolved run directory containing the saved artifacts
soma ships a command-line interface that runs a full pipeline from a YAML config file:
soma /path/to/config.yaml
python -m soma /path/to/config.yamlThe YAML layout is grouped by concern: run, data, preprocessing,
encoder, aggregation, task, evaluation, training, execution,
cache, and reports. soma merges your file on top of the bundled
soma/configs/default.yaml, so you usually only need to edit the blocks you
want to change.
You can also inspect the available presets directly from the terminal:
soma list encoders --level tile
soma list aggregators
soma list decoders
soma list pixel-classifiers
soma list tasksexamples/ contains a reference.yaml documenting every available field, and focused per-task starting points (slide_binary_classification.yaml, slide_ordinal_classification.yaml, slide_regression.yaml, tile_classification.yaml).
Full documentation is hosted at https://clemsgrs.github.io/soma.
- Getting started
- Pipeline
- Preprocessing
- Encoders
- Aggregators
- Tasks
- Training and Evaluation
- Caching
- Run outputs
- CLI
This repository is available under AGPL-3.0.
