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Smartphones-Based LiDAR Application for Easy and Accurate Wound Size Measurement

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13 September 2023

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15 September 2023

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Abstract
The accurate assessment of wound size is a critical step in advanced wound care management. This study aims to introduce and validate a Light Detection and Ranging (LiDAR) technique for measuring wound size. Twenty-eight wounds treated from December 2022 to April 2023 at the Chunganam National University Hospital were analyzed. All wounds were measured using three techniques; conventional ruler methods, the LiDAR technique, and ImageJ analysis. Correlation analysis, linear regression, and Bland-Altman plot analysis were conducted to validate the accuracy of the newly introduced method. The measurement results (Mean ± Standard deviation) obtained using the Ruler method, LiDAR technique, and ImageJ analysis were 112.99 ± 110.07 cm², 73.59 ± 72.97 cm², and 74.29 ± 72.15 cm², respectively. The Pearson correlation coefficient was higher in the LiDAR application (0.995) than the conventional ruler methods (Mean difference; -5.0000 cm2), as was the degree of agreement (Mean difference; 38.6933 cm2). Wound size measurement using LiDAR is a simple and reliable method that allows practitioners to conveniently assess wounds with a flattened and irregular shape. However, non-flattened wounds cannot be assessed owing to the technical limitations of LiDAR.
Keywords: 
Subject: Medicine and Pharmacology  -   Surgery

1. Introduction

The ability to accurately and precisely measure wound size is critical for wound assessment because it determines the overall effectiveness of wound management [1]. However, physicians and nurses typically use the traditional method involving rectangular measurements with a ruler. These measurements are quick but can be inaccurate and unreliable, especially for irregularly shaped wounds. In addition, this ruler-based rectangular measurement tends to overestimate the actual size of the wound, and the reliability of this technique decreases as the wound size increases [2]. Thus, the ruler measurement technique is unreliable, with up to 44% error in measurements [1,2,3]. A relatively accurate method for measuring the wound size involves tracing the wound perimeter on a transparent film and calculating the size of the wound either manually or using computer-assisted methods. Tracing generally ensures a better representation of the wound area than measuring using a ruler; however, it is considerably time-consuming and increases the risk of wound contamination and patient discomfort due to contact with the film [4].
Figure 1. Basic time-of-flight principles used in laser range finding.
Figure 1. Basic time-of-flight principles used in laser range finding.
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Light Detection and Ranging (LiDAR) is a common technique for measuring distances, which functions by timing the return pulse emitted from a laser transmitter to a laser receiver [1]. Lasers with wavelengths of 500–600 nm are typically used in ground-based LiDAR systems, whereas those with wavelengths of 1000–1600 nm are used in airborne LiDAR systems. LiDAR can be used to determine the distance between the detector and an object or surface using the following formula:
d = c t 2
where c is the speed of light, and d is the distance between the detector and the object or surface being detected.
The LiDAR technology has been used in aerospace and industrial applications to measure a wide range of areas and heights since the 1960s. With the recent introduction of the LiDAR technology in iPhone cameras, this technology is currently being widely used in interior architecture and building measurements [1,2]. The application of the LiDAR technique in flap size measurement or wound surface area measurement can have advantages; hence, in this study we used accurate and simple LiDAR-based smartphone applications that do not require a probe for calibration.
In this study, we aimed to compare the accuracy of the aforementioned LiDAR-based smartphone applications in measuring wound size and compare the results to those obtained using traditional ruler measurement and Image-J computational measurement methods.

2. Materials and Methods

2.1. Study design and patient selection

The study was performed between December 2022 and April 2023 at the Department of Reconstructive and Plastic Surgery of Chungnam National University Hospital. Patients aged over 18 years were eligible for enrolment in this study. Approval to conduct this human subject-based study was obtained from the Institutional Review Board of Chungnam National University Hospital, and all procedures complied with the ethical rules for human experimentation stated in the 1975 Declaration of Helsinki (CNHU-IRB- 2023-06-098).
This prospective study evaluated 45 patients (18 males and 27 females) who underwent reconstructive surgery during the study period. Various patients who underwent surgeries ranging from simple excisional biopsies, local flap for pressure sore reconstruction, abdominoplasty, and free flap surgery to lower leg reconstruction were included.
Eligibility criteria for this study were as follows (Figure 2):
  • Exclusion criteria
    Object of interest (mass, wound, or flap) smaller than 2.0 × 2.0 cm2.
    Object of interest (mass, wound, or flap) with uneven depth that may cause inaccurate recognition by LiDAR-based surface-area scanning.
  • Inclusion criteria
    Patients who underwent flap surgery for defect coverage
    Patients who underwent abdominoplasty surgery for rectal diastasis
    Patients who underwent excisional biopsy with uniform depth
Figure 2. Eligibility criteria (inclusion and exclusion criteria).
Figure 2. Eligibility criteria (inclusion and exclusion criteria).
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Wounds smaller than 2.0 × 2.0 cm2 were not included because of the technical limitations of the LiDAR-based surface-area scanning performed using smartphone devices. Wounds smaller than this size could not be measured because the size of the dot on which the application was segmented was larger than the size of the mass.
As two-dimensional planes are required to obtain surface-area values, free-flap donors and their associated defects were assessed as representative owing to the corresponding topological properties. Hence, only flat wounds or flaps were included in this study.
Each flap and its associated defects were measured using three different methods. The subcutaneous tissue beyond the skin was excluded from the measurement of interest based on the skin portion of the flap and its associated defects. In total, 28 wounds were assessed using three techniques: the conventional ruler method, a LiDAR technique-based smartphone application, and ImageJ analysis (Table 1 and Figure 3).
Figure 3. Comparison of the three different measurement methods used in this study.
Figure 3. Comparison of the three different measurement methods used in this study.
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2.2. Measurement Methods

(1)
Traditional ruler-based rectangular method
For each of the wounds, the width and length (cm) of the wound were measured using a ruler using the traditional rectangular measurement technique; we assumed the longest length of the area of interest as the major axis and the longest length at right angles as the minor axis and multiplied the two values to calculate the area.
(2)
LiDAR technique-based method (AR Ruler App: Tape Measure Cam, GRYMALA Company, Belarus)
For each of the 28 flaps and their associated defects, the size of the area was measured using the AR Ruler app installed on the iPhone 12 Max Pro. The hardware performance of the devices are described below, and the actual measurement method is demonstrated in a video clip (Supplementary Video). Specific hardware information and a list of smartphones (or devices) compatible with the LiDAR technique are provided below (Table 2).
(3)
ImageJ analysis
Photographs of the patients’ wounds were captured using a smartphone camera. The original photographs were then copied to a new folder. The wound area was measured using the following previously described method [4]:
  • ImageJ software was opened.
  • File > Open (Alternatively, the picture can be dragged and dropped into the software).
  • A segment was drawn along the ruler using the “straight line” tool. The examiners drew a 1 cm line along the ruler. The software then calculated the distance in the pixels of the segment.
  • Analyze menu > set scale > known distance (we used 1) > unit of length (cm). The software automatically recalculated the number of pixels in cm.
  • The wound outline was created using the “Freehand selections” tool by tracing the wound shape with the computer mouse (desktop computers) or trackpad (laptops).
  • Analyze menu > measure. The area was calculated in cm2.
  • A screenshot was taken of the screen along with the measurement window to save in the database.
Each technique was measured by three different physicians to avoid measurement bias.

2.3. Statistical analyses

The mean value of each wound size measurement and the differences between them were analyzed using a paired t-test. The correlation between the two measurements was calculated using Pearson’s correlation. Linear regression and Bland–Altman plot analyses were performed to statistically examine the agreement between the different measurement methods. Results were considered statistically significant at P<0.05. Data obtained from the study were analyzed using the Statistical Package for the Social Sciences version 26 (IBM Corporation, Armonk, NY, USA).

3. Results

3.1. Statistical interpretation

In total, 28 wounds were assessed using three techniques: the conventional ruler method, a LiDAR technique-based smartphone application, and ImageJ analysis.
Descriptive statistics for the three measurements are shown in Table 3. The average values for the ruler method, LiDAR technique, and ImageJ analysis were 112.99 ± 110.07 cm², 73.59 ± 72.97 cm², and 74.29 ± 72.15 cm², respectively, and the difference between ruler method and ImageJ analysis and LiDAR technique and ImageJ analysis were 39.40 and 0.7, respectively. Pearson’s correlation analysis revealed that the r values of the ruler and LiDAR techniques compared to those of ImageJ analysis (gold standard method) were 0.990 and 0.995, respectively (Table 4). In the box plot, the measurements of the LiDAR technique were closer to those of the gold standard than those of the conventional ruler method (Figure 3). In the linear regression analysis, the LiDAR technique showed a slope value close to 1 compared to that of the ruler method, which indicates that the LiDAR technique closely matches the gold standard (Figure 7).
Figure 3. Box plot analysis showing the distribution of wound sizes according to the different measurement methods.
Figure 3. Box plot analysis showing the distribution of wound sizes according to the different measurement methods.
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Although the Pearson correlation coefficient value was observed to be relatively high for the LiDAR technique (0.995), it did not show a significant difference; therefore, an additional Bland–Altman plot was constructed. Compared with linear regression, we observed a considerable difference and found that the mean difference and △LOA (upper limit of agreement – lower limit of agreement) for two different measurement methods were 38.6933, 157.5548 and -5.0000 and 29.1203, respectively. It was noted that the △LOA of ruler method was approximately five times higher than that of the LiDAR technique, which implies that the LiDAR technique is statistically more accurate than the ruler method (Figure 8).
Figure 4. Regression analysis results for measurements using the ruler, LiDAR, and ImageJ analysis. The regression equation is expressed as: y = a (95% CI) + b (95% CI) x (Passing & Bablok regression). (a) The regression line between the ruler method and Image J analysis measurements. The regression line has a slope of 1.51 and an intercept of 0.76. Correlation coefficient between the two methods is r = 0.980. (b) The regression line between the LiDAR method and Image J analysis measurements. The regression line has a slope of 1.01 and an intercept of 1.17. Correlation coefficient between the two methods is r = 0.990. Note that the correlation coefficient was relatively high for the LiDAR technique and slope of the linear regression is approximately 1, thus indicating a high degree of accuracy.
Figure 4. Regression analysis results for measurements using the ruler, LiDAR, and ImageJ analysis. The regression equation is expressed as: y = a (95% CI) + b (95% CI) x (Passing & Bablok regression). (a) The regression line between the ruler method and Image J analysis measurements. The regression line has a slope of 1.51 and an intercept of 0.76. Correlation coefficient between the two methods is r = 0.980. (b) The regression line between the LiDAR method and Image J analysis measurements. The regression line has a slope of 1.01 and an intercept of 1.17. Correlation coefficient between the two methods is r = 0.990. Note that the correlation coefficient was relatively high for the LiDAR technique and slope of the linear regression is approximately 1, thus indicating a high degree of accuracy.
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Figure 5. Bland–Altman plot between the ruler method and ImageJ analysis and LiDAR technique and ImageJ analysis. Note that a significant difference of agreement is observed.
Figure 5. Bland–Altman plot between the ruler method and ImageJ analysis and LiDAR technique and ImageJ analysis. Note that a significant difference of agreement is observed.
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3.2 Representative patients

Patient #1: An 81-year-old male underwent free-flap surgery for a diabetic foot ulcer. A free flap from the right thoracodorsal artery perforator was harvested from each patient. Flap size was assessed using the three aforementioned methods. The flap was oval and flat. The estimated size of the mass measured using the conventional rectangular method was 78.0 cm2 (13.0 cm × 6.0 cm). The estimated size of the mass obtained using LiDAR was 64.0 cm2. For an accurate comparison, the areas were also calculated using ImageJ software, and the result was 59.8 cm2 (Figure 7).
Figure 7. Comparison of the measured wound size for patient #1.
Figure 7. Comparison of the measured wound size for patient #1.
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Patient #2: A 40-year-old female underwent an abdominoplasty for rectal diastasis. An excessive skin flap was resected from each patient. The flap size was assessed using the three aforementioned methods. The flap was oval and flat. The estimated size of the mass obtained using conventional rectangular method was 471.04 cm2 (29.44 cm × 16.0 cm). The estimated size of the mass obtained using LiDAR was 285.6 cm2. For an accurate comparison, the areas were also calculated using Image J software, and the result was 297.08 cm2 (Figure 8).
Figure 8. Comparison of the measured wound size for patient #2.
Figure 8. Comparison of the measured wound size for patient #2.
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4. Discussion

Wound measurement plays a central role in the successful management of advanced wounds. Regular assessment of wound size can predict healing and provides information that can guide treatment decisions [1,5]. The current methods used for wound size measurement in clinical settings are centered on simple ruler-based techniques or wound tracing. These approaches are limited by subjective interpretation, significant inter-observer variability, and a high degree of inaccuracy [2]. Wound measurement tools for advanced wound care using various modalities are becoming available in the market. However, their disadvantages include high prices, the need for expensive machines for measurement, and the inconvenience of measurement. Most importantly, although these advanced wound assessment modules are accurate, they require probes for estimation. To overcome these disadvantages, we introduced a LiDAR sensor to assess wound size (Figure 9). LiDAR is a well-established technique commonly used to measure distances by timing the return pulse emitted from a laser transmitter to a laser receiver [1].
Figure 9. The LiDAR Application. (A) Apple iPhone 12 Pro camera module with a LiDAR scanner on the bottom. (B) Scanning of an in-house object with iPhone 12 Pro.
Figure 9. The LiDAR Application. (A) Apple iPhone 12 Pro camera module with a LiDAR scanner on the bottom. (B) Scanning of an in-house object with iPhone 12 Pro.
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The difference between our application and the built-in application on the iPhone is that it allows the calculation of the area in two dimensions rather than a 1-dimensional length. Further, this application can be used immediately after downloading for free from the app store, and the time required for the measurement does not differ from that required to take a picture with a conventional smartphone camera.
For a wound measurement technique to be useful in clinical practice and research, it needs to be time and cost efficient, easy to use, and should minimize patient discomfort [13].
In this study, the LiDAR technique application for wound size assessment was developed and validated for wound size measurement in actual patients. This method is advantageous, as it does not require expensive cameras or any specific equipment. It is based on free-of-charge applications that can be downloaded from the app store. Overall, in our study, we demonstrated that the LiDAR technique is more accurate than the conventional ruler method. Furthermore, traditional methods, such as wound tracing on transparent film, can be uncomfortable for patients. In contrast, LiDAR-based measurements are non-invasive and can be performed quickly, thereby reducing patient discomfort when assessing wound size. Additionally, this technique reduces the risk of infection, as the LiDAR technique eliminates the risk of wound contamination associated with tracing on transparent film or direct contact with rulers [4]. This is especially critical in wound assessment, as wound infections can lead to severe complications.
From the perspective of reconstructive surgery, the results of this study have various clinical implications. First, the precise estimation of defects results in the minimal harvest of autologous donor tissue. Thus, surgeons can better estimate the amount of tissue needed for grafts or flaps, reducing the risk of underestimation or overestimation and resulting in more efficient surgeries with fewer complications because an overestimated defect size requires an oversized flap elevation, which increases the chance of flap necrosis [14]. Second, owing to the real-time assessment capability of the LiDAR application, surgeons can use the LiDAR technique to accurately measure wounds and defects on the spot, thus helping them determine the most appropriate surgical approach.
However, this study has some limitations. First, owing to the technical limitations of mobile devices, the number of included patients (28) in this study was smaller than the number of patients evaluated (45). Second, wounds smaller than 2.0 × 2.0 cm2 were not included in this study because of the technical limitations of the LiDAR technique in smartphone devices. Wounds below this size cannot be measured because the size of the dot on which the application was segmented was larger than the size of the mass. Third, the wound margin was manually identified by the physician, without using an automated method; this could potentially introduce measurement bias and decrease the accuracy of the result. Fourth, the wound was limited to the flap and corresponding defect. This is because a non-flat wound cannot be bound by the LiDAR technique; this limitation should be addressed in future research. A two-dimensional measurement of the surface area that reflects depth should be devised in future studies. Finally, in the application used in this study, users manually assessed the boundary with their own hands, which may have introduced errors.
To overcome these limitations, future studies should focus on the development of computational algorithms for estimating the surface area of wounds with uneven depth, such as pressure ulcers, atypical shaped masses, and concave or convex ulcerative lesions or defects, using the LiDAR technique with mobile devices.

5. Conclusions

The LiDAR application reported herein offers a simple and accurate method for measuring wound size, particularly for wounds with irregular shapes. It has the potential to improve wound-care management by providing precise measurements and reducing patient discomfort. Moreover, the precise measurement of the wound or defect would result in minimal donor site sacrifice in terms of reconstructive surgery. Future studies should focus on addressing the limitations of the LiDAR technique, particularly with respect to non-flat and smaller wounds, and on developing computational algorithms to estimate surface area of wounds with uneven depths.

Supplementary Materials

The following supporting information can be downloaded at the website of this paper posted on Preprints.org. Supplementary Materials 1. iPhone 12 Pro Max key specification and list of cell phones (and devices) that use LiDAR technology; Supplementary Material 2. Steps in ImageJ analysis for wound size measurement; Supplemental video 1. Demonstration of the use of the LiDAR application for actual wound size assessment in the operating field.

Author Contributions

Conceptualization, B.K.S. and S.H.S.; methodology, J.H.K.; software, S.J.K.; validation, S.H.O.; formal analysis, B.K.S.; investigation, Y.S.H.; resources, S.J.K.; data curation, H.J.K.; writing—original draft preparation, B.K.S.; writing—review and editing, Y.S.H.; visualization, H.J.K.; supervision, S.H.O.; project administration, B.K.S.; funding acquisition, B.K.S. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by the National Research Foundation of Korea (NRF) grant funded by the Korea government (MSIT) (NRF-2021R1G1A1013694); Chungnam National University Hospital Research Fund, 2022; and a grant of the MD-PhD/Medical Scientist Training Program through the Korea Health Industry Development Institute (KHIDI), funded by the Ministry of Health & Welfare, Republic of Korea.

Institutional Review Board Statement

The study protocol was reviewed and approved by the CNUH institutional review board (CNHU-IRB- 2023-06-098).

Informed Consent Statement

Informed consent was obtained from all patients involved in the study.

Data Availability Statement

The data presented in this study are available on request from the corresponding author. The data are not publicly available due to patients’ privacy.

Acknowledgments

We would like to thank Editage (www.editage.co.kr) for English language editing.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. Comparison of the different wound size assessment methods.
Table 1. Comparison of the different wound size assessment methods.
Methods Advantages Disadvantages Examples
Traditional Rectangular method Simplest measurement methodNo additional device is required Inaccuracies of up to 44%[1,2,3] Ruler
LiDAR based assessment Easy to useNo probe required for calibration Unknown: no prior studies have investigated this technique AR Ruler App: tape Measure Cam (Not for wound analysis)
ImageJ surface analysis Most common method used to assess size measurement.Easy to use. Can measure complex objects Image files must be transferred to a computer.Probe necessary for calibration. Wound size measurementDetermine photosynthetic portion of a variegated leaf.Particle counting in molecular biology
Table 2. iPhone 12 Pro Max key specification used in this study, and a list of cell phones (and devices) that use the LiDAR technology.
Table 2. iPhone 12 Pro Max key specification used in this study, and a list of cell phones (and devices) that use the LiDAR technology.
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Table 3. Descriptive statistics and box plot analyses of actual wound sizes.
Table 3. Descriptive statistics and box plot analyses of actual wound sizes.
Ruler LiDAR ImageJ
N 28 28 28
Average 112.99 73.59 74.29
Standard Deviation (SD) 110.07 72.97 72.15
Range 455.05 332.90 310.56
Minimum 15.99 9.40 12.80
Maximum 471.04 342.30 323.36
Table 4. Correlation analysis among the three different measurement methods (bivariate analysis).
Table 4. Correlation analysis among the three different measurement methods (bivariate analysis).
Ruler LiDAR ImageJ
Ruler Pearson Correlation 1 .984** .990**
Sig. (2-tailed) .000 .000
N 28 28 28
LiDAR Pearson Correlation .984** 1 .995**
Sig. (2-tailed) .000 .000
N 28 28 28
ImageJ Pearson Correlation .990** .995** 1
Sig. (2-tailed) .000 .000
N 28 28 28
** Correlation is significant at the 0.01 level (2-tailed).
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