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DeepHealthExpo

Next-token DeepHealth training code for disease-event sequence modeling with optional extra/exposure information.

This repository is a clean code-only extraction from the main DeepHealth project. It keeps the next-token training path and reusable model/data utilities, while excluding large UKB data files, trained checkpoints, result folders, and all-future training entry points.

Included

  • train_next_step.py: next-token / UTS training entry point.
  • dataset.py: next-step event sequence dataset with unified extra-info tokens.
  • models.py, backbones.py: DeepHealth Transformer backbone.
  • losses.py, readouts.py, targets.py: training targets, losses, and readout utilities.
  • evaluate_auc.py, evaluate_token_auc.py: next-token checkpoint evaluation utilities.
  • prepare_data.py, prepare_event_dates.py, event_date_utils.py: data preparation helpers.
  • extra_info_types_*.txt: reusable extra-info type selections.

Not Included

The repository intentionally does not include raw or derived UKB arrays, split files, checkpoints, or run outputs.

Expected local data files for training normally include:

ukb_event_data.npy
ukb_other_info.npy
ukb_basic_info.csv
ukb_train_eid.csv
ukb_val_eid.csv
ukb_test_eid.csv
cate_types.csv

labels.csv and field_ids_enriched.csv are included because they define the model vocabulary and preparation metadata.

Example

python train_next_step.py \
  --data_prefix ukb \
  --labels_file labels.csv \
  --extra_info_types_file extra_info_types_exposure_only.txt \
  --target_mode uts \
  --time_mode relative

For strict next-token Delphi-style training:

python train_next_step.py --target_mode delphi2m --readout_name token

Exposure Modeling Direction

For onset-aligned environmental exposure parquet files, the first intended extension is single-stream event enhancement:

disease event token + pre-onset exposure embedding -> same next-token Transformer

The key constraint is that a disease event's own pre-onset exposure must not be used to predict that same disease event.

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Readme BSD-3-Clause 2.6 MiB
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