Computer-Assisted Mapping in Electrophysiology

Computer-Assisted Mapping in Electrophysiology

JACC: CLINICAL ELECTROPHYSIOLOGY VOL. 3, NO. 7, 2017 ª 2017 BY THE AMERICAN COLLEGE OF CARDIOLOGY FOUNDATION ISSN 2405-500X/$36.00 PUBLISHED BY EL...

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JACC: CLINICAL ELECTROPHYSIOLOGY

VOL. 3, NO. 7, 2017

ª 2017 BY THE AMERICAN COLLEGE OF CARDIOLOGY FOUNDATION

ISSN 2405-500X/$36.00

PUBLISHED BY ELSEVIER

http://dx.doi.org/10.1016/j.jacep.2017.04.008

EDITORIAL COMMENT

Computer-Assisted Mapping in Electrophysiology Are the Machines Taking Over?* Frank Bogun, MD, Mohammed Saeed, MD, PHD

T

he 12-lead electrocardiogram can be helpful

In this issue of JACC: Clinical Electrophysiology,

in localizing the exit site in scar-related

Sapp et al. (6) report on the utility of using the

ventricular

Pioneering

12-lead electrocardiogram to determine the exit site

work by Waxman and Josephson (1) and later Miller

tachycardia

(VT).

in scar-related VT by using a novel computerized

et al. (2) introduced the concept of dividing the

algorithm. Conventional 12-lead electrocardiographic

endocardium into several regions (typically 10 to

data (from 38 patients), along with 120-point body-

12) and studied whether particular 12-lead electro-

surface potential mapping data (in 18 patients of

cardiographic patterns during VT could be reliably

the 38-patient cohort) acquired during endocardial

mapped to specific regions. Several algorithms have

pacing were pooled. This resulted in surface elec-

been proposed using mapping schemes to guide

trocardiographic data from a set of 1,012 known

electrophysiologists during catheter ablation proced-

pacing sites, which were then labeled as originating

ures (1–3). In particular, in cases in which activation

from 1 of 16 left ventricular (LV) endocardial areas.

mapping may be limited by hemodynamic instability

SEE PAGE 687

during VT, the use of pace mapping to identify VT exit sites has been demonstrated to be of critical

Two complementary localization techniques are

importance (4). Yokokawa et al. (5) proposed a

presented. The first technique involves the use of a

semiautomated algorithm based on a supervised

template matching algorithm to map surface elec-

machine-learning

ma-

trocardiographic data to 1 of the 16 LV segments and

chines) trained on a set of patients and then

further to 1 of 238 triangles with a regression algo-

technique

(support-vector

validated on a different set of patients with approx-

rithm that specifies the x, y, and z coordinates of

imately 70% accuracy in localizing the VT sites of

the candidate site in 3-dimensional space on the

origin to 1 of 10 LV endocardial regions. Such

basis of a 3-dimensional generic model of the LV

advances

learning,

endocardium. Localization error was reported to be

along with the availability of automatically acquired

a mean of 12 mm using a bootstrapping method. In

pace-mapping data, open exciting possibilities for

another 20 patients, pace mapping was performed

developing real-time “intelligent” decision support

from a “limited” number of sites within a region of

systems to guide VT ablation procedures and poten-

interest

tially

approach)

in

shorten

computing

procedure

and

machine

times

and

improve

outcomes.

(guided to

by

the

train a

segment

localization

patient-specific

regression

model that allowed (on the basis of an “optimal” set of 3 surface electrocardiographic leads) improved localization of pace-mapping sites in the LV endocardium.

*Editorials published in JACC: Clinical Electrophysiology reflect the views of the authors and do not necessarily represent the views of JACC: Clinical Electrophysiology or the American College of Cardiology. From the Division of Cardiovascular Medicine, University of Michigan, Ann Arbor, Michigan. Both authors have reported that they have no relationships relevant to the contents of this paper to disclose.

The

reported

localization

error

using

patient-specific mapping coefficients was reported to be as low as 5 mm in select patients but varied from 2.6 to 20.7 mm. The segment localization approach appears to be similar to the work of Yokokawa et al. (5), who first

Bogun and Saeed

JACC: CLINICAL ELECTROPHYSIOLOGY VOL. 3, NO. 7, 2017 JULY 2017:700–2

Pace-Mapping and Computer Algorithm

demonstrated the feasibility of using a computa-

continuous 3-dimensional points rather than only

tional algorithm for localizing VT exit sites using

discrete segments of the LV endocardium, as others

pace mapping–generated QRS configurations in post-

have done. The “inverse problem” of electrocardiog-

infarct patients as training data. Unfortunately, Sapp

raphy has been pursued by many others, and typically

et al. (6) do not provide the individual error analysis

required

for the segment localization approach and instead

mapping electrocardiographic data, in addition to

provide only summary statistics (mean error locali-

information regarding heart-torso geometry and

zation of 12 mm) and report 75.9% accuracy over all

cardiac morphology from advanced cardiac morpho-

patients when the correct segment ranks among the

metric imaging analysis (computed tomography and/

top 3 of the candidate segments (Online Table 1 in

or magnetic resonance imaging) (7). It is surprising

Sapp et al. [6]). The size of this area of interest is not

that a localization error as low as 5 mm using only

indicated but is likely in the 30- to 50-cm 2 range (5).

3 electrocardiographic leads can be achieved in the

Unfortunately, the accuracy of the top template

absence of such 3-dimensional geometric data. The

match is not given. Furthermore, the investigators

investigators did not describe the body habitus,

do not describe the distribution of the pace-mapping

cardiac volumes, scar location and orientation of their

sites and their relationships to the distribution of

patient cohort. It would be helpful to understand the

known scar, as this may significantly affect the

reliability and robustness of computer algorithms in

configuration of the acquired 12-lead electrocardio-

relation to individual patient characteristics and

grams and hence the accuracy of their template

scar distribution patterns. The work presented by

matching algorithm.

Sapp et al. (6) can be seen as a preliminary proof-of-

Sapp et al. (6) report that the “personalized” regression coefficients localize endocardial points

concept

high-density

study

that

body-surface

certainly

warrants

potential

further

investigation.

from surface electrocardiographic data with surpris-

However, several caveats need to be considered:

ing accuracy in some patients. No clear-cut validation

First, it is important to emphasize that the localiza-

data are provided for all patients. Figure 3, for

tion error was based on predicting the site of pacing

example, demonstrates that from generic patient

rather than true VT exit sites. Validation data detail-

pooled data (from 38 patients), a template match with

ing the localization accuracy of target sites for given

a correlation coefficient (CC) of 0.99 could be gener-

VTs is reported for only 2 patients. The accuracy of

ated for an individual patient. It is unclear how one is

the method used is reported as the localization error

to interpret such a high template CC. In practice, it is

between the estimated 3-dimensional coordinate and

quite difficult to obtain a CC of 0.99 in a given patient

the actual point where pacing was done. There were

when pace mapping is performed to identify VT exit

20 patients used for computing the continuous

sites (and pace-mapping configurations are compared

coordinates, in which each patient had at least 10

with VT configurations in the same patient). There is

pacing sites within a confined neighborhood. This

a wide variance in the localization accuracy. For

clustering effect of pace mapping sites (1,012 points

example, Patient #25 had a localization mean error of

distributed over 238 segments) invariably leads to

20.7 mm. This is much higher than the reported

sparse sampling in some segments (some triangles

localization

may have 0 to 2 corresponding pace maps), with

error

using

the

population-based

template matching approach.

resulting under- and/or oversampled regions of the

The investigators describe a work flow for how this

generic LV endocardial model. Furthermore, scar-

method can be used for the practicing electrophysi-

related arrhythmias may likely lead to additional

ologist: VT is induced, and the computerized algo-

variability in spatial resolution of pace-mapping sites.

rithm will rank the best 3 LV endocardial segments

Second, it would be of more interest to evaluate

matching best with the induced VT configuration.

how this method performed for localizing VT exit

This is displayed as a CC. Then the operator proceeds

sites in all patients rather than calculating localiza-

to place the catheter in the proximity of these seg-

tion predictions of known endocardial mapping

ments and performs pace mapping at as many sites as

points. Not all VTs have exit sites in the endocardium.

possible (minimum of 5 sites), and local regression is

It is not clear how this algorithm performs for

performed in real time to provide the candidate exit

epicardial or intramural VTs. VTs originating from the

site. Eventually the operator will look at the actual

septum with intramural or right ventricular exit sites

matches of pace mapping rather than predictions of

may be incorrectly classified, because right ventricu-

an algorithm that may or may not be correct.

lar data were not included in the training data.

The work of Sapp et al. (6) is ambitious in that they attempted

to

localize

VT

exit

sites

to

actual

In summary, the computer algorithm described by Sapp et al. (6) helps regionalize VT exit sites in

701

702

Bogun and Saeed

JACC: CLINICAL ELECTROPHYSIOLOGY VOL. 3, NO. 7, 2017 JULY 2017:700–2

Pace-Mapping and Computer Algorithm

patients with structural heart disease by using training data from prior patients. Accuracy can be

ADDRESS FOR CORRESPONDENCE: Dr. Frank Bogun,

improved if more pace mapping is performed in the

Division of Cardiovascular Medicine, University of

region of interest. The value of this method for VT

Michigan, Cardiovascular Center, SPC 5853, 1500 East

ablation procedures will need to be determined

Medical Center Drive, Ann Arbor, Michigan 48109-

prospectively.

5853. E-mail: [email protected].

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human, infarct-related ventricular tachycardia. J Cardiovasc Electrophysiol 2007;18:161–8.

6. Sapp JL, Bar-Tal M, Howes AJ, et al. Real-time localization of ventricular tachycardia origin from the 12-lead electrocardiogram. J Am Coll Cardiol

pacing. Am J Cardiol 1982;50:1–10.

4. Marchlinski FE, Callans DJ, Gottlieb CD, Zado E. Linear ablation lesions for control of unmappable ventricular tachycardia in patients with ischemic and nonischemic cardiomyopathy. Circulation

EP 2017;3:687–99.

2. Miller JM, Marchlinski FE, Buxton AE, Josephson ME. Relationship between the 12-lead electrocardiogram during ventricular tachycardia and endocardial site of origin in patients with coronary artery disease. Circulation 1988;77:759–66.

2000;101:1288–96.

3. Segal OR, Chow AW, Wong T, et al. A novel

5. Yokokawa M, Liu TY, Yoshida K, et al. Automated analysis of the 12-lead electrocardiogram

algorithm for determining endocardial VT exit site from 12-lead surface ECG characteristics in

to identify the exit site of postinfarction ventricular tachycardia. Heart Rhythm 2012;9:330–4.

7. Ramanathan C, Ghanem RN, Jia P, Ryu K, Rudy Y. Noninvasive electrocardiographic imaging for cardiac electrophysiology and arrhythmia. Nat Med 2004;10:422–8.

KEY WORDS computerized algorithm, exit site, machine learning, ventricular tachycardia