Interstitial lung disease diagnosis and prognosis using an AI system integrating longitudinal data.
Xueyan MeiZelong LiuAyushi SinghM Marcia LangePriyanka BodduJingqi Q X GongJustine LeeCody DeMarcoChendi CaoSamantha PlattGanesh SivakumarBenjamin GrossMingqian HuangJoy MasseauxSakshi DuaAdam BernheimMichael S ChungTimothy DeyerAdam JacobiMaria PadillaZahi Adel FayadYang YangPublished in: Nature communications (2023)
For accurate diagnosis of interstitial lung disease (ILD), a consensus of radiologic, pathological, and clinical findings is vital. Management of ILD also requires thorough follow-up with computed tomography (CT) studies and lung function tests to assess disease progression, severity, and response to treatment. However, accurate classification of ILD subtypes can be challenging, especially for those not accustomed to reading chest CTs regularly. Dynamic models to predict patient survival rates based on longitudinal data are challenging to create due to disease complexity, variation, and irregular visit intervals. Here, we utilize RadImageNet pretrained models to diagnose five types of ILD with multimodal data and a transformer model to determine a patient's 3-year survival rate. When clinical history and associated CT scans are available, the proposed deep learning system can help clinicians diagnose and classify ILD patients and, importantly, dynamically predict disease progression and prognosis.
Keyphrases
- interstitial lung disease
- systemic sclerosis
- computed tomography
- rheumatoid arthritis
- lung function
- deep learning
- idiopathic pulmonary fibrosis
- dual energy
- electronic health record
- end stage renal disease
- contrast enhanced
- image quality
- positron emission tomography
- chronic kidney disease
- magnetic resonance imaging
- big data
- artificial intelligence
- case report
- machine learning
- chronic obstructive pulmonary disease
- cystic fibrosis
- high resolution
- ejection fraction
- newly diagnosed
- air pollution
- peritoneal dialysis
- cross sectional
- free survival
- prognostic factors
- magnetic resonance
- palliative care
- clinical practice
- patient reported
- convolutional neural network