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A critical review of explainable deep learning in lung cancer diagnosis

Emmanouil Koutoulakis, Eleftherios Trivizakis, Emmanouil Markodimitrakis, Sofia Agelaki, Manolis Tsiknakis, Kostas Marias

2025Artificial Intelligence Review7 citationsDOIOpen Access PDF

Abstract

Abstract In the current research landscape, there is a plethora of artificial intelligence methods for medical image analysis, improving diagnostic accuracy; however, AI introduces challenges related to trustworthiness and transparency of decisions. Clinicians and medical experts often find it difficult to comprehend the process by which machine learning models arrive at specific outcomes. This has the potential to hinder the ethical use of AI in a clinical setting. Explainable AI (XAI) enables clinicians to interpret and consequently improve trust for outcomes predicted by ML models. This review critically examines emerging trends in XAI applied to lung cancer modeling. Novel XAI implementations in tasks like weakly supervised lesion localization, prognostic models, and survival analysis are highlighted. Furthermore, this study explores the extend of clinician contributions in the development of XAI, the impact of interobserver variability, the evaluation and scoring of explanation maps, the adaptation of XAI methods to medical imaging, and lung-specific attributes that may influence XAI. Novel extensions to the current state-of-the-art are also discussed critically throughout this study.

Topics & Concepts

Artificial intelligenceDeep learningTransparency (behavior)Computer scienceLung cancerImplementationMachine learningMedicineProcess (computing)Adaptation (eye)TrustworthinessMedical imagingMedical physicsIntensive care medicineArtificial neural networkData scienceMEDLINECancerCase-based reasoningRadiomics and Machine Learning in Medical ImagingLung Cancer Diagnosis and TreatmentCOVID-19 diagnosis using AI
A critical review of explainable deep learning in lung cancer diagnosis | Litcius