--- language: - en metrics: - rouge-l tags: - medical - summarization - clinical - bart - Radiology - Radiology Reports datasets: - MIMIC-III widget: - >- post contrast axial sequence shows enhancing large neoplasm left parietal convexity causing significant amount edema mass effect study somewhat limited due patient motion similar enhancing lesion present inferior aspect right cerebellar hemisphere right temporal encephalomalacia noted mra brain shows patent flow anterior posterior circulation evidence aneurysm vascular malformation - >- seen hypodensity involving right parietal temporal lobes right cerebellar hemisphere effacement sulci mild mass effect lateral ventricle hemorrhage new region territorial infarction basal cisterns patent mucosal thickening fluid within paranasal sinuses aerosolized secretions likely related intubation mastoid air cells middle ear cavities clear - >- heart size normal mediastinal hilar contours unchanged widening superior mediastinum likely due combination mediastinal lipomatosis prominent thyroid findings unchanged compared prior ct aortic knob mildly calcified pulmonary vascularity engorged patchy linear opacities lung bases likely reflect atelectasis focal consolidation pleural effusion present multiple old rightsided rib fractures inference: parameters: max_length: 350 --- # Radiology Report Summarization This model summarizes radiology findings into accurate, informative impressions to improve radiologist-clinician communication. ## Model Highlights - **Model name:** Radiology_Bart - **Author:** [Muhammad Bilal](linkedin.com/in/muhammad-bilal-6155b41aa) - **Model type:** Sequence-to-sequence model - **Library:** PyTorch, Transformers - **Language:** English ### Parent Model - **Repository:** [GanjinZero/biobart-v2-base](https://huggingface.co./GanjinZero/biobart-v2-base) - **Paper:** [BioBART: Pretraining and Evaluation of A Biomedical Generative Language Model](https://arxiv.org/pdf/2204.03905.pdf) This model is a version of pretrained BioBart-v2-base model further finetuned on 70,000 radiology reports to generate radiology impressions. It produces concise, coherent summaries while preserving key findings. ## Model Architecture Radiology_Bart is built on the BioBart architecture, a sequence-to-sequence model which is pre-trained on biomedical-text-data[PubMed](https://pubmed.ncbi.nlm.nih.gov/). The encoder-decoder structure allows it to compress radiology findings into impression statements. Key components: - Encoder: Maps input text to contextualized vector representations - Decoder: Generates output text token-by-token - Attention: Aligns relevant encoder and decoder hidden states ## Data The model was trained on 70,000 deidentified radiology reports split into training (52,000), validation (8,000), and test (10,000) sets. The data covers diverse anatomical regions and imaging modalities (X-ray, CT, MRI). ## Training - Optimization: AdamW - Batch size: 16 - Learning rate: 5.6e-5 - Epochs: 4 The model was trained to maximize the similarity between generated and reference impressions using ROUGE metrics. ## Performance **Evaluation Metrics** | ROUGE-1 score | ROUGE-2 score | ROUGE-L score | ROUGELSUM score | |---------------|---------------|---------------|-----------------| | 44.857 | 29.015 | 42.032 | 42.038 | Demonstrating high overlap with human references. ## Usage ```python from transformers import AutoTokenizer, AutoModelForSeq2SeqLM, Pipeline # Sample findings findings = "There is a small lung nodule in the right upper lobe measuring 6 mm. The heart size is normal. No pleural effusion or pneumothorax." # Load model & tokenizer summarizer = pipeline("summarization", model="Mbilal755/Radiology_Bart") tokenizer = AutoTokenizer.from_pretrained("Mbilal755/Radiology_Bart") # Tokenize findings inputs = tokenizer(findings, return_tensors="pt") # Generate summary summary = summarizer(findings)[0]['summary_text'] # Print outputs print(f"Findings: {findings}") print(f"Summary: {summary}") ``` ## Limitations This model is designed solely for radiology report summarization. It should not be used for clinical decision-making or other NLP tasks. ## Check Demo [For Demo Click here](https://huggingface.co./spaces/Mbilal755/Rad_Summarizer) ## Model Card Contact - Name: Eng. Muhammad Bilal - [Muhammad Bilal Linkedin](linkedin.com/in/muhammad-bilal-6155b41aa) - [Muhammad Bilal GitHub](https://github.com/BILAL0099) -