A New Index for the Quantitative Evaluation of Surgical Invasiveness Based on Perioperative Patients' Behavior Patterns: Machine Learning Approach Using Triaxial Acceleration.

AI VATS artificial intelligence human activity recognition invasiveness machine learning mobile phone patient-oriented outcome perioperative management postoperative recovery surgery triaxial acceleration video-assisted thoracoscopic surgery

Journal

JMIR perioperative medicine
ISSN: 2561-9128
Titre abrégé: JMIR Perioper Med
Pays: Canada
ID NLM: 101771348

Informations de publication

Date de publication:
14 Nov 2023
Historique:
received: 22 06 2023
accepted: 11 10 2023
revised: 12 09 2023
medline: 14 11 2023
pubmed: 14 11 2023
entrez: 14 11 2023
Statut: epublish

Résumé

The minimally invasive nature of thoracoscopic surgery is well recognized; however, the absence of a reliable evaluation method remains challenging. We hypothesized that the postoperative recovery speed is closely linked to surgical invasiveness, where recovery signifies the patient's behavior transition back to their preoperative state during the perioperative period. This study aims to determine whether machine learning using triaxial acceleration data can effectively capture perioperative behavior changes and establish a quantitative index for quantifying variations in surgical invasiveness. We trained 7 distinct machine learning models using a publicly available human acceleration data set as supervised data. The 3 top-performing models were selected to predict patient actions, as determined by the Matthews correlation coefficient scores. Two patients who underwent different levels of invasive thoracoscopic surgery were selected as participants. Acceleration data were collected via chest sensors for 8 hours during the preoperative and postoperative hospitalization days. These data were categorized into 4 actions (walking, standing, sitting, and lying down) using the selected models. The actions predicted by the model with intermediate results were adopted as the actions of the participants. The daily appearance probability was calculated for each action. The 2 differences between 2 appearance probabilities (sitting vs standing and lying down vs walking) were calculated using 2 coordinates on the x- and y-axes. A 2D vector composed of coordinate values was defined as the index of behavior pattern (iBP) for the day. All daily iBPs were graphed, and the enclosed area and distance between points were calculated and compared between participants to assess the relationship between changes in the indices and invasiveness. Patients 1 and 2 underwent lung lobectomy and incisional tumor biopsy, respectively. The selected predictive model was a light-gradient boosting model (mean Matthews correlation coefficient 0.98, SD 0.0027; accuracy: 0.98). The acceleration data yielded 548,466 points for patient 1 and 466,407 points for patient 2. The iBPs of patient 1 were [(0.32, 0.19), (-0.098, 0.46), (-0.15, 0.13), (-0.049, 0.22)] and those of patient 2 were [(0.55, 0.30), (0.77, 0.21), (0.60, 0.25), (0.61, 0.31)]. The enclosed areas were 0.077 and 0.0036 for patients 1 and 2, respectively. Notably, the distances for patient 1 were greater than those for patient 2 ({0.44, 0.46, 0.37, 0.26} vs {0.23, 0.0065, 0.059}; P=.03 [Mann-Whitney U test]). The selected machine learning model effectively predicted the actions of the surgical patients with high accuracy. The temporal distribution of action times revealed changes in behavior patterns during the perioperative phase. The proposed index may facilitate the recognition and visualization of perioperative changes in patients and differences in surgical invasiveness.

Sections du résumé

BACKGROUND BACKGROUND
The minimally invasive nature of thoracoscopic surgery is well recognized; however, the absence of a reliable evaluation method remains challenging. We hypothesized that the postoperative recovery speed is closely linked to surgical invasiveness, where recovery signifies the patient's behavior transition back to their preoperative state during the perioperative period.
OBJECTIVE OBJECTIVE
This study aims to determine whether machine learning using triaxial acceleration data can effectively capture perioperative behavior changes and establish a quantitative index for quantifying variations in surgical invasiveness.
METHODS METHODS
We trained 7 distinct machine learning models using a publicly available human acceleration data set as supervised data. The 3 top-performing models were selected to predict patient actions, as determined by the Matthews correlation coefficient scores. Two patients who underwent different levels of invasive thoracoscopic surgery were selected as participants. Acceleration data were collected via chest sensors for 8 hours during the preoperative and postoperative hospitalization days. These data were categorized into 4 actions (walking, standing, sitting, and lying down) using the selected models. The actions predicted by the model with intermediate results were adopted as the actions of the participants. The daily appearance probability was calculated for each action. The 2 differences between 2 appearance probabilities (sitting vs standing and lying down vs walking) were calculated using 2 coordinates on the x- and y-axes. A 2D vector composed of coordinate values was defined as the index of behavior pattern (iBP) for the day. All daily iBPs were graphed, and the enclosed area and distance between points were calculated and compared between participants to assess the relationship between changes in the indices and invasiveness.
RESULTS RESULTS
Patients 1 and 2 underwent lung lobectomy and incisional tumor biopsy, respectively. The selected predictive model was a light-gradient boosting model (mean Matthews correlation coefficient 0.98, SD 0.0027; accuracy: 0.98). The acceleration data yielded 548,466 points for patient 1 and 466,407 points for patient 2. The iBPs of patient 1 were [(0.32, 0.19), (-0.098, 0.46), (-0.15, 0.13), (-0.049, 0.22)] and those of patient 2 were [(0.55, 0.30), (0.77, 0.21), (0.60, 0.25), (0.61, 0.31)]. The enclosed areas were 0.077 and 0.0036 for patients 1 and 2, respectively. Notably, the distances for patient 1 were greater than those for patient 2 ({0.44, 0.46, 0.37, 0.26} vs {0.23, 0.0065, 0.059}; P=.03 [Mann-Whitney U test]).
CONCLUSIONS CONCLUSIONS
The selected machine learning model effectively predicted the actions of the surgical patients with high accuracy. The temporal distribution of action times revealed changes in behavior patterns during the perioperative phase. The proposed index may facilitate the recognition and visualization of perioperative changes in patients and differences in surgical invasiveness.

Identifiants

pubmed: 37962919
pii: v6i1e50188
doi: 10.2196/50188
pmc: PMC10685283
doi:

Types de publication

Journal Article

Langues

eng

Pagination

e50188

Informations de copyright

©Kozo Nakanishi, Hidenori Goto. Originally published in JMIR Perioperative Medicine (http://periop.jmir.org), 14.11.2023.

Références

J Thorac Cardiovasc Surg. 2010 Feb;139(2):366-78
pubmed: 20106398
Eur J Cardiothorac Surg. 2016 Apr;49(4):1054-8; discussion 1058
pubmed: 26604295
Obes Rev. 2011 Oct;12(10):781-99
pubmed: 21676153
Med Sci Sports Exerc. 1995 Jun;27(6):934-40
pubmed: 7658958
Eur J Cardiothorac Surg. 2001 Sep;20(3):455-63
pubmed: 11509263
Ann Thorac Surg. 2001 Sep;72(3):879-84
pubmed: 11565674
Aging Clin Exp Res. 2018 Mar;30(3):259-262
pubmed: 29305794
J Thorac Dis. 2021 Jan;13(1):244-251
pubmed: 33569204
J Surg Res. 2019 Dec;244:368-373
pubmed: 31323392
J Thorac Cardiovasc Surg. 2008 Mar;135(3):642-7
pubmed: 18329487
Support Care Cancer. 2014 Apr;22(4):1121-30
pubmed: 24389829
Ann Thorac Surg. 1999 Jul;68(1):194-200
pubmed: 10421140
IEEE Access. 2020;8:210816-210836
pubmed: 33344100
Surg Endosc. 2004 Oct;18(10):1492-7
pubmed: 15791376
Eur J Surg Oncol. 2020 Nov;46(11):2083-2090
pubmed: 32682650
Heart Lung Circ. 2021 Jun;30(6):882-887
pubmed: 33191139
Integr Cancer Ther. 2019 Jan-Dec;18:1534735419876346
pubmed: 31530046
JTCVS Open. 2022 May 31;11:176-191
pubmed: 36172447
BMC Surg. 2017 May 12;17(1):56
pubmed: 28494785
J Thorac Cardiovasc Surg. 1994 Apr;107(4):1079-85; discussion 1085-6
pubmed: 8159030
Eur J Cardiothorac Surg. 2017 Jun 1;51(6):1177-1182
pubmed: 28329201
Sensors (Basel). 2021 Feb 27;21(5):
pubmed: 33673447
J Cardiothorac Surg. 2014 Sep 27;9:128
pubmed: 25262229
Sensors (Basel). 2020 Apr 13;20(8):
pubmed: 32295028
Aust J Physiother. 2007;53(1):47-52
pubmed: 17326738
Sensors (Basel). 2022 May 12;22(10):
pubmed: 35632109
Ann Behav Med. 2018 Jan 05;52(1):88-92
pubmed: 29538623
Animal. 2021 Jul;15(7):100269
pubmed: 34102430
Ann Thorac Surg. 2001 Aug;72(2):362-5
pubmed: 11515867
Appl Nurs Res. 2020 Feb;51:151189
pubmed: 31672262
Med Sci Sports Exerc. 2010 Sep;42(9):1776-84
pubmed: 20142781
JSLS. 2007 Jul-Sep;11(3):368-74
pubmed: 17931521
Exp Ther Med. 2018 Dec;16(6):4893-4899
pubmed: 30542445

Auteurs

Kozo Nakanishi (K)

Department of General Thoracic Surgery, National Hospital Organization Saitama Hospital, Wako Saitama, Japan.

Hidenori Goto (H)

Department of General Thoracic Surgery, National Hospital Organization Saitama Hospital, Wako Saitama, Japan.

Classifications MeSH