TY - JOUR T1 - Machine learning-derived electrocardiographic algorithm for the detection of cardiac amyloidosis JF - Heart JO - Heart SP - 1137 LP - 1147 DO - 10.1136/heartjnl-2021-319846 VL - 108 IS - 14 AU - Lore Schrutka AU - Philip Anner AU - Asan Agibetov AU - Benjamin Seirer AU - Fabian Dusik AU - René Rettl AU - Franz Duca AU - Daniel Dalos AU - Theresa-Marie Dachs AU - Christina Binder AU - Roza Badr-Eslam AU - Johannes Kastner AU - Dietrich Beitzke AU - Christian Loewe AU - Christian Hengstenberg AU - Günther Laufer AU - Guenter Stix AU - Georg Dorffner AU - Diana Bonderman Y1 - 2022/07/01 UR - http://heart.bmj.com/content/108/14/1137.abstract N2 - Background Diagnosis of cardiac amyloidosis (CA) requires advanced imaging techniques. Typical surface ECG patterns have been described, but their diagnostic abilities are limited.Objective The aim was to perform a thorough electrophysiological characterisation of patients with CA and derive an easy-to-use tool for diagnosis.Methods We applied electrocardiographic imaging (ECGI) to acquire electroanatomical maps in patients with CA and controls. A machine learning approach was then used to decipher the complex data sets obtained and generate a surface ECG-based diagnostic tool.Findings Areas of low voltage were localised in the basal inferior regions of both ventricles and the remaining right ventricular segments in CA. The earliest epicardial breakthrough of myocardial activation was visualised on the right ventricle. Potential maps revealed an accelerated and diffuse propagation pattern. We correlated the results from ECGI with 12-lead ECG recordings. Ventricular activation correlated best with R-peak timing in leads V1–V3. Epicardial voltage showed a strong positive correlation with R-peak amplitude in the inferior leads II, III and aVF. Respective surface ECG leads showed two characteristic patterns. Ten blinded cardiologists were asked to identify patients with CA by analysing 12-lead ECGs before and after training on the defined ECG patterns. Training led to significant improvements in the detection rate of CA, with an area under the curve of 0.69 before and 0.97 after training.Interpretation Using a machine learning approach, an ECG-based tool was developed from detailed electroanatomical mapping of patients with CA. The ECG algorithm is simple and has proven helpful to suspect CA without the aid of advanced imaging modalities.All data relevant to the study are included in the article or uploaded as supplemental information. ER -