| Literature DB >> 33734096 |
Heidy Cos1, Dingwen Li1, Chenyang Lu1, Chet W Hammill1,2, Gregory Williams1, Jeffrey Chininis1,2, Ruixuan Dai1, Jingwen Zhang1, Rohit Srivastava1, Lacey Raper1, Dominic Sanford1,2, William Hawkins1,2.
Abstract
BACKGROUND: Pancreatic cancer is the third leading cause of cancer-related deaths, and although pancreatectomy is currently the only curative treatment, it is associated with significant morbidity.Entities:
Keywords: activity; machine learning; pancreatectomy; pancreatic cancer; remote monitoring; telemonitoring; wearable technology
Year: 2021 PMID: 33734096 PMCID: PMC8074869 DOI: 10.2196/23595
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Patient characteristics.
| Characteristic | Patients with complications (n=20) | Patients with textbook outcomes (n=28) | ||
| Age (years), mean (range) | 67.24 (48.14-80.52) | 60.26 (31.02-84.02) | .04 | |
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| .12 | |
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| Male | 11 (55) | 8 (29) |
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| Female | 9 (45) | 20 (71) |
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| .86 | |
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| White | 19 (95) | 25 (89) |
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| Non-White | 1 (5) | 3 (11) |
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| .06 | |
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| ≥5 | 12 (60) | 8 (29) |
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| <5 | 8 (40) | 20 (71) |
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| .45 | |
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| Never smoked | 11 (55) | 19 (68) |
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| Active smoker with >10 pack years | 1 (5) | 3 (11) |
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| Active smoker with <10 pack years | 0 | 1 (3.5) |
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| Past history of smoking with >30 pack years | 7 (35) | 4 (14) |
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| Past history of smoking with <30 pack years | 1 (5) | 1 (3.5) |
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| .48 | |
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| ≥5 | 7 (35) | 6 (21) |
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| <5 | 13 (65) | 22 (79) |
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| .07 | |
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| 1 | 0 | 1 (3.6) |
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| 2 | 7 (35) | 18 (64.3) |
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| 3 | 13 (65) | 9 (32.1) |
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| BMI (kg/m2), mean (range) | 27.99 (20.30-37.00) | 29.03 (19.00-48.07) | .59 | |
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| .02 | |
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| Yes | 15 (75) | 10 (36) |
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| No | 5 (25) | 18 (64) |
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| .38 | |
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| Open | 14 (70) | 14 (50) |
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| Laparoscopic | 4 (20) | 9 (32) |
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| Robotic | 2 (10) | 5 (18) |
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| .22 | |
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| Pancreaticoduodenectomy | 18 (90) | 23 (82) |
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| Distal pancreatectomy | 1 (5) | 5 (18) |
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| Total pancreatectomy | 1 (5) | 0 (0) |
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aP values were derived from chi-square tests for categorical variables and F tests for continuous variables.
bASA: American Society of Anesthesiologists.
Performance comparison of machine learning models trained with different data sources.
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| Metricsb | ||||
| Parametera | Model | AUROCc curve | Sensitivity | Specificity | Precision | F1 score |
| ACS-NSQIP SRCd |
| 0.6333 | 0.9000 | 0.0370 | 0.4091 | 0.5625 |
| Patient clinical characteristics | LRe | 0.7054 | 0.9000 | 0.2321 | 0.4558 | 0.6051 |
| Patient activity | SVMf | 0.7027 | 0.9000 | 0.2107 | 0.4491 | 0.5992 |
| Patient clinical characteristics + patient activity | GBTg | 0.7875 | 0.9000 | 0.3929 | 0.5143 | 0.6545 |
aParameters used for the models are summarized in Multimedia Appendix 1.
bThe metrics for the machine learning models represent the average across all leave-one-subject-out cross-validation folds.
cAUROC: area under the receiver operating characteristic.
dAmerican College of Surgeons National Surgical Quality Improvement Program surgical risk calculator (ACS-NSQIP SRC) was used as the baseline model for complications from pancreatoduodenectomy.
eLR: logistic regression.
fSVM: support vector machine.
gGBT: gradient boosted trees.
Analysis of variance test statistics on the features extracted from Fitbit Inspire HR (Fitbit, Inc) data.
| Featuresa | Patients with complications, mean (SD) | Patients with textbook outcomes, mean (SD) |
| SHAPb value | ||
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| Variance of local homogeneity | 6744.5286 (5055.2469) | 13362.2921 (7545.2961) | 11.1603 | .002 | 1.2694 |
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| Mean of correlation | 31.9993 (0.0007) | 31.9996 (0.0004) | 2.5324 | .12 | 0.2338 |
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| Mean DFAc of heart rate with 40-minute window | 22.7418 (5.3550) | 24.8816 (5.0493) | 1.9086 | .17 | 0.2214 |
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| Mean of energy | 202.1648 (192.6207) | 140.9836 (71.2032) | 2.2724 | .14 | 0.2064 |
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| Mean of skewness | 1.3182 (0.4978) | 1.1065 (0.4253) | 2.4006 | .13 | 0.1787 |
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| Cosinor amplitude | 6.2318 (3.3540) | 7.3569 (3.6230) | 1.1464 | .29 | 0.1507 |
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| Variance of correlation | 3.3737e–7 (8.8545e–7) | 9.9500e–7 (2.0791e–7) | 1.7977 | .19 | 0.1500 |
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| Log Cosinor amplitude | 2.2616 (0.6844) | 2.4344 (0.6922) | 0.7041 | .41 | 0.1119 |
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| Mean of kurtosis | 6.2530 (2.2063) | 5.6795 (2.4526) | 0.6640 | .42 | 0.0558 |
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| Variance DFA of heart rate with 30-minute window | 12.1549 (7.9180) | 17.6321 (11.8530) | 3.1035 | .08 | 0.0476 |
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| Variance of daily sedentary bout | 0.4669 (0.2638) | 0.5574 (0.3587) | 0.8798 | .35 | 0.2174 |
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| Mean of intradaily stability | 0.1100 (0.0808) | 0.0689 (0.0368) | 5.3752 | .02 | 0.0930 |
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| Relative amplitude | 0.2948 (0.1653) | 0.2097 (0.0878) | 5.0969 | .03 | 0.0662 |
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| Intradaily stability with 60-minute window | 0.1341 (0.1034) | 0.0788 (0.0559) | 5.4469 | .02 | 0.0428 |
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| Mean DFA of sleep stages with 50-minute window | 2.8834 (0.3767) | 2.9634 (0.2589) | 0.7294 | .40 | 0.0471 |
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| Neutrophils | 50.8000 (27.5481) | 31.5393 (30.4855) | 4.8323 | .03 | 0.9024 |
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| Prior surgery | 0.7500 (0.4330) | 0.3571 (0.4792) | 8.1374 | .007 | 0.3428 |
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| Calcium | 9.2450 (0.4955) | 9.6071 (0.6464) | 4.2378 | .05 | 0.2932 |
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| ASAd class | 2.6500 (0.4770) | 2.2857 (0.5249) | 5.8069 | .02 | 0.1522 |
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| Hyperlipidemia | 0.6000 (0.4899) | 0.3571 (0.4792) | 2.8189 | .10 | 0.0419 |
aStatistically significant features (P value <.05) are listed.
bSHAP: SHapley Additive exPlanations.
cDFA: detrended fluctuation analysis.
dASA: American Society of Anesthesiologists.