Introduction: A surgeon’s technical skills are an important factor in delivering optimal patient care. Most existing methods to estimate technical skills remain subjective and resource intensive. Robotic-assisted surgery (RAS) provides a unique opportunity to develop objective metrics using key elements of intraoperative surgeon behavior which can be captured unobtrusively, such as instrument positions and button presses. Recent studies have shown that objective metrics based on these data (referred to as objective performance indicators [OPIs]) correlate to select clinical outcomes during robotic-assisted radical prostatectomy. However, the current OPIs remain difficult to interpret directly and, therefore, to use within structured feedback to improve surgical efficiencies. Methods: We analyzed kinematic and event data from da Vinci surgical systems (Intuitive Surgical, Inc., Sunnyvale, CA, USA) to calculate values that can summarize the use of robotic instruments, referred to as OPIs. These indicators were mapped to broader technical skill categories of established training protocols. A data-driven approach was then applied to further sub-select OPIs that distinguish skill for each technical skill category within each training task. This subset of OPIs was used to build a set of logistic regression classifiers that predict the probability of expertise in that skill to identify targeted improvement and practice. The final, proposed feedback using OPIs was based on the coefficients of the logistic regression model to highlight specific actions that can be taken to improve. Results: We determine that for the majority of skills, only a small subset of OPIs (2–10) are required to achieve the highest model accuracies (80–95%) for estimating technical skills within clinical-like tasks on a porcine model. The majority of the skill models have similar accuracy as models predicting overall expertise for a task (80–98%). Skill models can divide a prediction into interpretable categories for simpler, targeted feedback. Conclusion: We define and validate a methodology to create interpretable metrics for key technical skills during clinical-like tasks when performing RAS. Using this framework for evaluating technical skills, we believe that surgical trainees can better understand both what can be improved and how to improve.

1.
Chen
A
,
Ghodoussipour
S
,
Titus
MB
,
Nguyen
JH
,
Chen
J
,
Ma
R
, et al.
Comparison of clinical outcomes and automated performance metrics in robot- assisted radical prostatectomy with and without trainee involvement
.
World J Urol
.
2019
;
•••
:
1
7
.
[PubMed]
0724-4983
2.
Fecso
AB
,
Kuzulugil
SS
,
Babaoglu
C
,
Bener
AB
,
Grantcharov
TP
.
Relationship between intraoperative non-technical performance and technical events in bariatric surgery
.
Br J Surg
.
2018
Jul
;
105
(
8
):
1044
50
.
[PubMed]
0007-1323
3.
Hung
AJ
,
Oh
PJ
,
Chen
J
,
Ghodoussipour
S
,
Lane
C
,
Jarc
A
, et al.
Experts vs super-experts: differences in automated performance metrics and clinical outcomes for robot-assisted radical prostatectomy
.
BJU Int
.
2019
May
;
123
(
5
):
861
8
.
[PubMed]
1464-4096
4.
Hung
AJ
,
Chen
J
,
Ghodoussipour
S
,
Oh
PJ
,
Liu
Z
,
Nguyen
J
, et al.
A deep-learning model using automated performance metrics and clinical features to predict urinary continence recovery after robot-assisted radical prostatectomy
.
BJU Int
.
2019
Sep
;
124
(
3
):
487
95
.
[PubMed]
1464-4096
5.
Birkmeyer
JD
,
Finks
JF
,
O’Reilly
A
,
Oerline
M
,
Carlin
AM
,
Nunn
AR
, et al.;
Michigan Bariatric Surgery Collaborative
.
Surgical skill and complication rates after bariatric surgery
.
N Engl J Med
.
2013
Oct
;
369
(
15
):
1434
42
.
[PubMed]
0028-4793
6.
Goldenberg
MG
,
Lee
JY
,
Kwong
JC
,
Grantcharov
TP
,
Costello
A
.
Implementing assessments of robot-assisted technical skill in urological education: a systematic review and synthesis of the validity evidence
.
BJU Int
.
2018
Sep
;
122
(
3
):
501
19
.
[PubMed]
1464-4096
7.
Chen
J
,
Chu
T
,
Ghodoussipour
S
,
Bowman
S
,
Patel
H
,
King
K
, et al.
Effect of surgeon experience and bony pelvic dimensions on surgical performance and patient outcomes in robot-assisted radical prostatectomy
.
BJU Int
.
2019
Nov
;
124
(
5
):
828
35
.
[PubMed]
1464-4096
8.
Vedula
SS
,
Ishii
M
,
Hager
GD
.
Objective assessment of surgical technical skill and competency in the operating room
.
Annu Rev Biomed Eng
.
2017
Jun
;
19
(
1
):
301
25
.
[PubMed]
1523-9829
9.
Azari
D
,
Greenberg
C
,
Pugh
C
,
Wiegmann
D
,
Radwin
R
.
In search of characterizing surgical skill
.
J Surg Educ
.
2019
Sep - Oct
;
76
(
5
):
1348
63
.
[PubMed]
1931-7204
10.
Reiley
CE
,
Lin
HC
,
Yuh
DD
,
Hager
GD
,
Martin
JR
,
Monfare
S
, et al.
Review of methods for objective surgical skill evaluation
.
Surg Endosc
.
2011
Feb
;
25
(
2
):
356
66
.
[PubMed]
0930-2794
11.
O ̈zdemir-van Brunschot, DMD, Warle ́, MC, van der Jagt, MF, Grutters, JPC, van Horne, SBCE, Kloke, HJ, et al. Surgical team composition has a major impact on effectiveness and costs in la- paroscopic donor nephrectomy. World journal of urology, 33(5):733–741,
2015
.
12.
Pearce
SM
,
Pariser
JJ
,
Patel
SG
,
Anderson
BB
,
Eggener
SE
,
Zagaja
GP
.
The impact of days off between cases on perioperative outcomes for robotic-assisted laparoscopic prostatectomy
.
World J Urol
.
2016
Feb
;
34
(
2
):
269
74
.
[PubMed]
0724-4983
13.
Curry
M
,
Malpani
A
,
Li
R
,
Tantillo
T
,
Jog
A
,
Blanco
R
, et al.
Objective assessment in residency-based training for transoral robotic surgery
.
Laryngoscope
.
2012
Oct
;
122
(
10
):
2184
92
.
[PubMed]
0023-852X
14.
Estrada
S
,
Duran
C
,
Schulz
D
,
Bismuth
J
,
Byrne
MD
,
O’Malley
MK
.
Smoothness of surgical tool tip motion correlates to skill in endovascular tasks
.
IEEE Trans Hum Mach Syst
.
2016
;
46
(
5
):
647
59
. 2168-2291
15.
Fard
MJ
,
Ameri
S
,
Darin Ellis
R
,
Chinnam
RB
,
Pandya
AK
,
Klein
MD
.
Automated robot-assisted surgical skill evaluation: predictive analytics approach
.
Int J Med Robot
.
2018
Feb
;
14
(
1
):
e1850
.
[PubMed]
1478-5951
16.
Zia
A
,
Essa
I
.
Automated surgical skill assessment in RMIS training
.
Int J CARS
.
2018
May
;
13
(
5
):
731
9
.
[PubMed]
1861-6410
17.
Jarc
AM
,
Curet
MJ
.
Viewpoint matters: objective performance metrics for surgeon endoscope control during robot-assisted surgery
.
Surg Endosc
.
2017
Mar
;
31
(
3
):
1192
202
.
[PubMed]
0930-2794
18.
Hung
AJ
,
Chen
J
,
Jarc
A
,
Hatcher
D
,
Djaladat
H
,
Gill
IS
.
De- velopment and validation of objective performance metrics for robot-assisted radical prostatectomy: a pilot study
.
J Urol
.
2018
Jan
;
199
(
1
):
296
304
.
[PubMed]
0022-5347
19.
Lyman
WB
,
Passeri
M
,
Murphy
K
,
Siddiqui
IA
,
Khan
AS
,
Lannitti
DA
, et al.
Novel objective approach to evaluate novice robotic surgeons using a combination of kinematics and stepwise cumulative sum analyses
.
J Am Coll Surg
.
2018
;
227
(
4
):
S223
4
. 1072-7515
20.
Padoy
N
.
Machine and deep learning for workflow recognition during surgery
.
Minim Invasive Ther Allied Technol
.
2019
Apr
;
28
(
2
):
82
90
.
[PubMed]
1364-5706
21.
Sarikaya
D
,
Jannin
P
.
Towards generalizable surgical activity recognition using spatial temporal graph convolutional networks.
arXiv preprint
arXiv
:,
2020
.
22.
DiPietro
R
,
Lea
C
,
Malpani
A
,
Ahmidi
N
,
Vedula
SS
,
Lee
GI
, et al.
 Recognizing surgical activities with recurrent neural networks.
Interna- tional conference on medical image computing and computer-assisted intervention
.
Springer
;
2016
. pp.
551
8
.
23.
van Amsterdam
B
,
Nakawala
H
,
Momi
ED
,
Stoyanov
D
.
Weakly super- vised recognition of surgical gestures.
In
2019 International Conference on Robotics and Automation (ICRA)
, pages
9565
9571
.
IEEE
,
2019
.
24.
Zia
A
,
Zhang
C
,
Xiong
X
,
Jarc
AM
.
Temporal clustering of surgical activities in robot-assisted surgery
.
Int J CARS
.
2017
Jul
;
12
(
7
):
1171
8
.
[PubMed]
1861-6410
25.
Zia
A
,
Hung
A
,
Essa
I
,
Jarc
A
.
Surgical activity recognition in robot-assisted radical prostatectomy using deep learning.
In
International Conference on Medical Image Computing and Computer-Assisted Intervention
, pages
273
280
.
Springer
,
2018
.
26.
Zia
A
,
Guo
L
,
Zhou
L
,
Essa
I
,
Jarc
A
.
Novel evaluation of surgical activity recognition models using task-based efficiency metrics
.
Int J CARS
.
2019
Dec
;
14
(
12
):
2155
63
.
[PubMed]
1861-6410
27.
Maier-Hein
L
,
Vedula
S
,
Speidel
S
,
Navab
N
,
Kikinis
R
,
Park
A
, et al.
Surgical data science: enabling next-generation surgery.
arXiv preprint
arXiv
:,
2017
.
28.
Chen
J
,
Cheng
N
,
Cacciamani
G
,
Oh
P
,
Lin-Brande
M
,
Remulla
D
, et al.
Objective assessment of robotic surgical technical skill: a systematic review
.
J Urol
.
2019
Mar
;
201
(
3
):
461
9
.
[PubMed]
0022-5347
29.
Lema^ıtre
G
,
Nogueira
F
,
Aridas
CK
.
Imbalanced-learn: A python toolbox to tackle the curse of imbalanced datasets in machine learning
.
J Mach Learn Res
.
2017
;
18
(
17
):
1
5
.1532-4435
30.
Laurikkala
J
. Improving identification of difficult small classes by balancing class distribution. In Silvana Quaglini, Pedro Barahona, and Steen Andreassen, editors, Artificial Intelligence in Medicine, pages 63–66, Berlin, Heidelberg,
2001
. Springer Berlin Heidelberg.
31.
Batista
GE
,
Prati
RC
,
Monard
MC
.
A study of the behavior of several methods for balancing machine learning training data
.
SIGKDD Explor
.
2004
Jun
;
6
(
1
):
20
9
. 1931-0145
32.
James
G
,
Witten
D
,
Hastie
T
,
Tibshirani
R
.
An introduction to statistical learning
.
Volume 112
.
Springer
;
2013
.
33.
Abdi
H
.
Bonferroni corrections for multiple comparisons.
Encyclopedia of measurement and statistics, 3:103–107,
2007
.
34.
Guan
D
,
Yuan
W
,
Lee
YK
,
Najeebullah
K
,
Rasel
MK
.
A review of ensemble learning based feature selection
.
IETE Tech Rev
.
2014
;
31
(
3
):
190
8
. 0256-4602
35.
Pedregosa
F
,
Varoquaux
G
,
Gramfort
A
,
Michel
V
,
Thirion
B
,
Grisel
O
, et al.
Scikit-learn: machine learning in Python
.
J Mach Learn Res
.
2011
;
12
:
2825
30
.1532-4435
36.
Brodersen
KH
,
Ong
CS
,
Stephan
KE
,
Buhmann
JM
.
The balanced accuracy and its posterior distribution.
In 2010 20th International Conference on Pattern Recognition, pages 3121–3124. IEEE,
2010
.
37.
Matthews
BW
.
Comparison of the predicted and observed secondary structure of T4 phage lysozyme
.
Biochim Biophys Acta
.
1975
Oct
;
405
(
2
):
442
51
.
[PubMed]
0006-3002
38.
Chicco
D
,
Jurman
G
.
The advantages of the Matthews correlation coefficient (MCC) over F1 score and accuracy in binary classification evaluation
.
BMC Genomics
.
2020
Jan
;
21
(
1
):
6
.
[PubMed]
1471-2164
39.
Ghani
KR
,
Miller
DC
,
Linsell
S
,
Brachulis
A
,
Lane
B
,
Sarle
R
, et al.;
Michigan Urological Surgery Improvement Collaborative
.
Measuring to improve: peer and crowd-sourced assessments of technical skill with robot-assisted radical prostatectomy
.
Eur Urol
.
2016
Apr
;
69
(
4
):
547
50
.
[PubMed]
0302-2838
40.
Peabody
JO
,
Miller
DC
,
Linsell
S
,
Lendvay
T
,
Comstock
B
,
Lane
B
, et al.
192 wisdom of the crowds: use of crowdsourcing to assess surgical skill of robot- assisted radical prostatectomy in a statewide surgical collaborative
.
Eur Urol Suppl
.
2015
;
14
(
2
):
e192
e192a
. 1569-9056
41.
Powers
MK
,
Boonjindasup
A
,
Pinsky
M
,
Dorsey
P
,
Maddox
M
,
Su
LM
, et al.
Crowdsourcing assess- ment of surgeon dissection of renal artery and vein during robotic partial nephrectomy: a novel ap- proach for quantitative assessment of surgical performance
.
J Endourol
.
2016
Apr
;
30
(
4
):
447
52
.
[PubMed]
0892-7790
42.
Goh
AC
,
Goldfarb
DW
,
Sander
JC
,
Miles
BJ
,
Dunkin
BJ
.
Global evaluative assessment of robotic skills: validation of a clinical assessment tool to measure robotic surgical skills
.
J Urol
.
2012
Jan
;
187
(
1
):
247
52
.
[PubMed]
0022-5347
43.
Grantcharov
TP
,
Reznick
RK
.
Teaching procedural skills
.
BMJ
.
2008
May
;
336
(
7653
):
1129
31
.
[PubMed]
0959-8138
44.
Gao
Y
,
Vedula
SS
,
Reiley
CE
,
Ahmidi
N
,
Varadarajan
B
,
Lin
HC
, et al.
Jhu-isi gesture and skill assessment working set (jigsaws): A surgical activity dataset for human motion modeling. In MICCAI Workshop: M2CAI, volume 3, page 3,
2014
.
45.
Liu
M
,
Purohit
S
,
Mazanetz
J
,
Allen
W
,
Kreaden
US
,
Curet
M
.
Assessment of Robotic Console Skills (ARCS): construct validity of a novel global rating scale for technical skills in robotically assisted surgery
.
Surg Endosc
.
2018
Jan
;
32
(
1
):
526
35
.
[PubMed]
0930-2794
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