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, Interpretable machine learning ? Non-ICM ? LBBB ? Highest proportion of females ? Less remodelled LV; high LVEF, GLS ? Less remodelled RV, high FAC ? Septal flash strain pattern NYHA class, lowest diuretic use ? Least remodelled LA, LV; high LVEF, GLS ? Less remodelled RV, high FAC ? Reduced septal
Longest QRS duration ? Youngest patients ? High proportion of females ? Lowest SBP, highest HR ? Highest diuretic & MRA use ? Most remodelled LA, LV; lowest LVEF, GLS ? Most remodelled RV, lowest FAC ? Marked Septal flash strain pattern ? Highest primary outcome rate in ICDonly treated patients ? ICM ? Low proportion of LBBB ? High proportion of males ? High proportion of diabetics ? Remodelled LV, low LVEF ? Remodelled RV, low FAC ? Extensive apical and inferoseptal scar ? ,