by ncbi
Open source · 229k downloads · 60 likes
The MedCPT Query Encoder is a specialized model designed to generate embeddings for short biomedical texts, such as queries or sentences, to facilitate semantic similarity-based search. Trained on a vast dataset of 255 million query-article pairs derived from PubMed search logs, it excels in biomedical information retrieval tasks without additional fine-tuning, outperforming other models on multiple benchmarks. Its primary applications include retrieving relevant articles from a query, clustering similar queries or articles, and directly comparing short and long texts through a shared vector representation. What sets it apart is its ability to capture nuanced biomedical domain-specific features, thereby optimizing result relevance in this demanding field. Developed by the NCBI, it leverages real-world data and practical medical research needs.
MedCPT generates embeddings of biomedical texts that can be used for semantic search (dense retrieval). The model contains two encoders:
This repo contains the MedCPT Query Encoder.
MedCPT has been pre-trained by an unprecedented scale of 255M query-article pairs from PubMed search logs, and has been shown to achieve state-of-the-art performance on several zero-shot biomedical IR datasets. In general, there are three use cases:
For more details, please check out our paper (Bioinformatics, 2023). Please note that the released version is slightly different from the version reported in the paper.
import torch
from transformers import AutoTokenizer, AutoModel
model = AutoModel.from_pretrained("ncbi/MedCPT-Query-Encoder")
tokenizer = AutoTokenizer.from_pretrained("ncbi/MedCPT-Query-Encoder")
queries = [
"diabetes treatment",
"How to treat diabetes?",
"A 45-year-old man presents with increased thirst and frequent urination over the past 3 months.",
]
with torch.no_grad():
# tokenize the queries
encoded = tokenizer(
queries,
truncation=True,
padding=True,
return_tensors='pt',
max_length=64,
)
# encode the queries (use the [CLS] last hidden states as the representations)
embeds = model(**encoded).last_hidden_state[:, 0, :]
print(embeds)
print(embeds.size())
The output will be:
tensor([[ 0.0413, 0.0084, -0.0491, ..., -0.4963, -0.3830, -0.3593],
[ 0.0801, 0.1193, -0.0905, ..., -0.5380, -0.5059, -0.2944],
[-0.3412, 0.1521, -0.0946, ..., 0.0952, 0.1660, -0.0902]])
torch.Size([3, 768])
These embeddings are also in the same space as those generated by the MedCPT article encoder.
We have provided the embeddings of all PubMed articles generated by the MedCPT article encoder at https://ftp.ncbi.nlm.nih.gov/pub/lu/MedCPT/pubmed_embeddings/. You can simply download these embeddings to search PubMed with your query.
This work was supported by the Intramural Research Programs of the National Institutes of Health, National Library of Medicine.
This tool shows the results of research conducted in the Computational Biology Branch, NCBI/NLM. The information produced on this website is not intended for direct diagnostic use or medical decision-making without review and oversight by a clinical professional. Individuals should not change their health behavior solely on the basis of information produced on this website. NIH does not independently verify the validity or utility of the information produced by this tool. If you have questions about the information produced on this website, please see a health care professional. More information about NCBI's disclaimer policy is available.
If you find this repo helpful, please cite MedCPT by:
@article{jin2023medcpt,
title={MedCPT: Contrastive Pre-trained Transformers with large-scale PubMed search logs for zero-shot biomedical information retrieval},
author={Jin, Qiao and Kim, Won and Chen, Qingyu and Comeau, Donald C and Yeganova, Lana and Wilbur, W John and Lu, Zhiyong},
journal={Bioinformatics},
volume={39},
number={11},
pages={btad651},
year={2023},
publisher={Oxford University Press}
}