Pathobiological Dictionary Defining Pathomics and Texture Features: Addressing Understandable AI Issues in Personalized Liver Cancer; Dictionary Version LCP1.0
Mohammad R. Salmanpour, Seyed Mohammad Piri, Somayeh Sadat Mehrnia, Ahmad Shariftabrizi, Masume Allahmoradi, Venkata SK. Manem, Arman Rahmim, Ilker Hacihaliloglu

TL;DR
This paper introduces the Pathobiological Dictionary for Liver Cancer (LCP1.0), translating complex AI-derived imaging features into clinically meaningful insights to improve interpretability and trustworthiness in liver cancer diagnostics.
Contribution
It presents a validated framework linking AI features with clinical semantics, enhancing interpretability and usability of diagnostic models for liver cancer.
Findings
Highest accuracy (0.80) achieved with Variable Threshold and SVM.
20 key features identified, mainly nuclear and cytoplasmic traits.
Features strongly associated with tumor grading and prognosis.
Abstract
Artificial intelligence (AI) holds strong potential for medical diagnostics, yet its clinical adoption is limited by a lack of interpretability and generalizability. This study introduces the Pathobiological Dictionary for Liver Cancer (LCP1.0), a practical framework designed to translate complex Pathomics and Radiomics Features (PF and RF) into clinically meaningful insights aligned with existing diagnostic workflows. QuPath and PyRadiomics, standardized according to IBSI guidelines, were used to extract 333 imaging features from hepatocellular carcinoma (HCC) tissue samples, including 240 PF-based-cell detection/intensity, 74 RF-based texture, and 19 RF-based first-order features. Expert-defined ROIs from the public dataset excluded artifact-prone areas, and features were aggregated at the case level. Their relevance to the WHO grading system was assessed using multiple classifiers…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging
MethodsSupport Vector Machine · Feature Selection
