Litcius/Paper detail

HSGA: A Hybrid LSTM-CNN Self-Guided Attention to Predict the Future Diagnosis From Discharge Narratives

Gaspard Harerimana, Gun Il Kim, Jong Wook Kim, Beakcheol Jang

2023IEEE Access13 citationsDOIOpen Access PDF

Abstract

The prognosis of a patient’s re-admission and the forecast of future diagnoses is a critical task in the process of inferring clinical outcomes. The discharge summaries recorded in the Electronic Health Records (EHR) are stinking rich but they are also heterogeneous, sparse, noisy, and biased, and hinder the learning algorithms that aim to extract actionable insights from them. The existing approaches use the current admission’s International Classification of Diseases (ICD) codes as input but they do not fully describe the progression of the patient. Other systems apply the attention mechanisms directly to these notes without the guidance of a domain knowledge resulting in distorted predictions. In this work, we propose a hybrid LSTM-CNN self-guided attention model that aims to predict the ICD diagnosis that is likely to cause the next readmission within 90 days since the current discharge using the discharge narratives. Because the notes contain unnecessary tokens, the model leverages the recent advances in deep learning to predict the patient’s future diagnosis by reducing the number of tokens from the notes to be considered for prediction. We use a 1D CNN (Convolutional Neural Network) to capture all features from the note and concurrently an LSTM (Long Short-Term Memory) is used to extract the features of clinically meaningful Concept Unique Identifiers (CUI) that are fetched from the note itself to build a knowledge base. The textual knowledge base guides the learning module about which n-grams from the note to focus on for prediction. We consider 3 prediction scenarios; diagnosis category prediction, the probability of the occurrence of one of the top 20 disease conditions and ICD9 codes prediction. For the diagnosis category prediction, the model achieves a Macro-Average ROC of 0.82, an AUROC of 0.87 for most the Top 20 most appearing diseases prediction, and a Micro-RECALL of 0.84 for ICD9 codes prediction. The predictive accuracy of the model is assessed through the prediction of heart failure onset and for all these prediction scenarios the results show that the hybrid approach outperforms the existing baselines.

Topics & Concepts

Computer scienceConvolutional neural networkDeep learningArtificial intelligenceMachine learningProcess (computing)NarrativeFocus (optics)Task (project management)Medical diagnosisRecurrent neural networkDomain knowledgeIdentifierKnowledge baseHealth recordsDomain (mathematical analysis)Natural language processingArtificial neural networkHealth careMedicineOpticsPhysicsProgramming languageEconomicsOperating systemManagementEconomic growthMathematical analysisPathologyPhilosophyMathematicsLinguisticsMachine Learning in HealthcareTopic ModelingBiomedical Text Mining and Ontologies