CC BY-NC-ND 4.0 · Int J Sports Med 2024; 45(02): 85-94
DOI: 10.1055/a-2158-8278
Review

Clinical Approach to Inconclusive Subscapularis Tear Diagnosis: a Meta-analysis

Hao Wang
1   Orthopedics, Peking University First Hospital, Beijing, China
,
Xiangyu Cao
2   Orthopedics, Peking University Third Hospital, Beijing, China
,
Baoqiang Li
3   Orthopedics, Beijing Chaoyang Hospital, Beijing, China
,
Taiguo Ning
1   Orthopedics, Peking University First Hospital, Beijing, China
,
Yongping Cao
1   Orthopedics, Peking University First Hospital, Beijing, China
› Author Affiliations
 

Abstract

To identify factors associated with subscapularis (SSC) tears and provide a theoretical basis for clinical diagnosis, we included studies related to subscapularis tears published before February 1, 2023. We screened for six predictors across previous studies for the meta-analysis. The predictors included age, sex, coracoid overlap (CO), coracohumeral distance (CHD), impairment of the long head of the biceps tendon (LHB), and dominant arm. The Newcastle-Ottawa Scale (NOS) was used to evaluate the quality of the studies. The risk ratios (RRs) and the weighted mean differences (WMDs) were used to evaluate the effect size of categorical variables and continuous variables, respectively. The Egger test was used to assess the publication bias of the studies. Ten studies were included from seven countries. A total of 2 126 patients were enrolled, of whom 1 041 had subscapularis tears and 1 085 did not. The study showed that age (WMD, 4.23 [95% CI, 2.32–6.15]; P<.00001), coracoid overlap (WMD, 1.98 [95% CI, 1.55–2.41]; P<.00001), coracohumeral distance(WMD, –1.03 [95% CI, –1.17– –0.88]; P<.00001), and an injury of the long head of the biceps tendon (RR, 4.98 [95% CI, 3.75–6.61]; P<.00001) were risk factors for subscapularis tears. These risk factors can help clinicians identify subscapularis tears early and select appropriate interventions. The level of evidence is 3.


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Introduction

For males or females of all ages, shoulder pain and dysfunction could be a sign of rotator cuff injury. The subscapularis (SSC) muscle is important for the balance, stability and internal rotation of the shoulder joint. Relevant studies have found that 12%–50% of patients present with SSC tendon tears during arthroscopy [1] [2].

Magnetic resonance imaging (MRI) is a noninvasive method of examining rotator cuff injuries [3]. Although MRI has a sensitivity of more than 90% for both supraspinatus and infraspinatus tears, the use of MRI as a tool for SSC tears is challenging [4]. Furukawa R et al. showed that when the MRI field strength was 3.0 T, the sensitivity of diagnosis of SSC tears was 57.9% and 60.5% in the axial and oblique sagittal positions, respectively [3]. If the field strength was 1.5 T, the sensitivity of diagnosis of SSC tears was 45.3% [5]. A systematic review showed that MRI for the diagnosis of SSC tears had an overall sensitivity of 68% [6]. However, more than half of the studies used magnetic resonance arthrography (MRA) as a diagnostic tool, which increases the sensitivity of diagnosis. In addition, the thickness and size of SSC tears have a direct influence on the diagnostic accuracy of MRI. The smaller a torn area is, the lower the accuracy of the diagnosis [7] [8]. In addition, some researchers used CT as a preoperative diagnostic criterion for rotator cuff tears. They looked for correlations with rotator cuff tears by taking some anatomical measurements on CT [9]. However, due to regional differences, differences in research designs and research indicators, differences in patients’ races, and differences in economic conditions, the indicator has different research effects in different studies [9].

Although the repair of SSC tears with arthroscopy has achieved good clinical results, the sensitivity of diagnosis of SSC tears with MRI is not ideal at present [10]. If an SSC tear is missed, it may cause long-term shoulder pain or dysfunction with muscle atrophy, fat infiltration, and extended tear areas [11]. During arthroscopic rotator cuff repair, it was observed that SSC tears were missed in 43.1% of patients, and the fatty infiltration of SSC tendons, which was initially overlooked, showed further expansion during revision [12]. SSC tendon injury is easily missed, has a low sensitivity of diagnosis, has a high degree of involvement in important functions, and has great clinical significance. Therefore, it is necessary to improve methods for the early diagnosis of SSC tears. In-depth studies of SSC tendon injury found that the morphological changes of the coracoid process in subcoracoid impingement may result in the pathological injury of SSC tendons [13]. Researchers believe that some imaging signs may be related to SSC tears [14] [15] [16]. These findings suggest that the sensitivity and accuracy of the diagnosis of SSC tears may be improved by measuring a number of imaging indicators related to SSC tears.

Relevant studies have shown that age, sex, coracoid overlap (CO), coracohumeral distance (CHD), long head of the biceps tendon (LHB) injury, and the dominant arm may be related to SSC tears [6] [9] [15] [17] [18] [19] [20]. The purpose of our study was to summarize previously demonstrated correlations between the above indicators and SSC tears through meta-analysis and to identify the most valuable predictive indicators for SSC tears to help clinicians make early diagnoses and formulate early treatment plans for SSC injuries. To our knowledge, this is the first meta-analysis evaluating risk factors for SSC tears.


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Materials and Methods

Search strategy

The MOOSE (Meta-analysis Of Observational Studies in Epidemiology) guidelines were used to guide the meta-analysis [21]. First, PROSPERO (International prospective register of systematic reviews) searches revealed that there was no systematic review or meta-analysis related to risk factors for SSC tears before our research was performed. Second, PROSPERO was used to register the protocol of the meta-analysis online, as recommended by PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines, and the registration number is CRD42022332681. EMBASE, PubMed, the Cochrane Library and Web of Science were searched from inception up to February 1, 2023. The keywords used were “rotator cuff injury”, “rotator cuff tears”, “rotator cuff tendinosis”, “rotator cuff tendinitis”, “subscapularis tears”, and “risk factors”. The search strategy is shown in [Table 1].

Table 1 Search strategy.

PubMed : 479 results (up to 1 January 2023)

((“rotator cuff injury”[Title/Abstract] OR “subscapularis tears”[Title/Abstract] OR “rotator cuff tears”[Title/Abstract] OR “rotator cuff tear”[Title/Abstract] OR “rotator cuff tendinosis”[Title/Abstract] OR “rotator cuff tendinitis”[Title/Abstract] OR “Rotator Cuff Injuries”[MeSH Terms]) AND (“Risk Factors”[MeSH Terms] OR (“Risk Factors”[Title/Abstract] OR “risk factor”[Title/Abstract])))

Embase : 734 results (up to 1 January 2023)

#1 'risk factor'/exp

#2 'risk factor':ab,ti

#3 #1 OR #2

#4 'rotator cuff injury'/exp

#5 ('rotator cuff injury':ab,ti OR 'rotator cuff tears':ab,ti OR 'rotator cuff tear':ab,ti OR 'rotator cuff tendinosis':ab,ti OR 'rotator cuff tendinitis':ab,ti OR 'subscapularis tears':ab,ti)

#6 #4 OR #5

#7 #3 AND #6

Cochrane library : 35 results (up to 1 January 2023)

#1 MeSH descriptor: [Rotator Cuff Injuries] explode all trees

#2 (Rotator Cuff Injury):ti,ab,kw OR (subscapularis Tears):ti,ab,kw OR (Rotator Cuff Tears):ti,ab,kw OR (Rotator Cuff Tear):ti,ab,kw OR (Rotator Cuff Tendinosis):ti,ab,kw

#3 #1 OR #2

#4 MeSH descriptor: [Risk Factors] explode all trees

#5 (risk factor):ti,ab,kw OR (risk factors):ti,ab,kw

#6 #4 OR #5

#7 #3 AND #6

Web of science : 400 results (up to 1 January 2023)

#1 AB=(Rotator Cuff Injury OR Rotator Cuff Tears OR Rotator Cuff Tear OR Rotator Cuff Tendinosis OR Rotator Cuff Tendinitis OR subscapularis tears)

#2 AB=(risk factors OR risk factor)

#3 #2 AND #1


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Criteria for inclusion and exclusion

The inclusion criteria were as follows: (1) patients in the experimental group had SSC tears, and those in the control group did not have SSC tears; (2) the experimental group and control group were identified with arthroscopy; (3) studies were case-control, cohort, or cross-sectional studies; (4) there was at least one evaluation indicator in the included studies; and (5) there was no language restriction.

Studies with incomplete data, duplicate studies, and studies with patients who had undergone previous shoulder operations were excluded. Studies that were unpublished or in progress were excluded.


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Study screening and data extraction

Two researchers independently checked the studies and extracted the data. The third participant resolved any discrepancies through discussion or negotiation. After duplicates were removed, the abstracts and full texts were read to determine which studies could be included. The extracted information included the basic characteristics of the studies, such as the first author, country, study design, publication dates, sex of the patients, level of evidence, method of diagnosis, preoperative evaluation method, and blinding procedures. In addition to the above, for some studies, if there was some unmentioned but important information that we needed, we contacted the corresponding author of the original study by email.

After the initial screening, a total of 1 648 records were identified. After title, abstract and full text filtering, 417 duplicates were deleted, and 1 206 records that did not meet the criteria were excluded. Finally, there were ten eligible studies that were included in the qualitative and quantitative analysis. [Fig. 1] provides a PRISMA flowchart for the screening of studies conducted through this meta-analysis.

Zoom Image
Fig. 1 Flow diagram showing the study screening process.

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Assessment of study quality

Our meta-analysis included cohort studies, cross-sectional studies, and case–control studies. The Newcastle–Ottawa Scale (NOS) quality scoring system was used to assess the risk of bias in case-control studies and cohort studies [22]. The scale was evaluated in three aspects: study population selection, comparability between groups, and measurement of exposure factors. The maximal possible score is 9: 0–3 is low quality, 4–6 is medium quality, and 7–9 is high quality. Two researchers met to complete the work.


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Statistical analysis

RevMan 5.3 software (Cochrane, London, UK ) and Stata 15.1 software (StataCorp College Station, Texas, USA) were used for our meta-analysis. The risk ratios (RRs) and the weighted mean differences (WMDs) were used to evaluate the effect size of categorical variables and continuous variables, respectively. The 95% confidence interval (95% CI) was calculated for each effect size. Heterogeneity tests were used to assess heterogeneity among the included studies. If there was no heterogeneity (I2<=50%), the overall effect size was evaluated by a fixed effects model. If there was heterogeneity (I2>50%), the overall effect size was evaluated by a random effects model. The Egger test was performed with Stata 15.1 software to assess publication bias. P<0.05 was considered to be statistically significant.


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Results

Characteristics of included articles

Ten studies from seven countries were included [6] [9] [15] [17] [18] [19] [20] [23] [24] [25]. A total of 2 126 patients and six predictors were included. A total of seven articles had a level of evidence of “3”, one article had a level of evidence of “1”, one article had a level of evidence of “2”, and two articles had a level of evidence of “4”. Among the 10 references, all arthroscopy was used for the diagnosis in all articles. MRI was used as the evaluation standard in eight studies, while computed tomography (CT) was used as the evaluation standard in two studies. Six studies were single-blinded, and four studies were not blinded. The basic characteristics of the included studies are shown in [Table 2].

Table 2 The Characteristics of Included Studies.

Studies(first author)

Year

Country

Experimental group(n)

Control group(n)

Sex (E: F/M) (C: F/M)

Age (y) (E/C)

Study design

Level of evidence

Diagnosis

Method of evaluation

Blind

Adam C. Watson

2017

Australia

53

23

case-control design

III

arthroscopy

MRI

no-blinded

Eduardo A. Malavolta

2016

Brazil

50

43

30/20

58.54±6.929/

case-control design

III

arthroscopy

MRI

single-blinded

29/14

53.49±8.143

Joong-Bae Seo

2019

Korea

114

57

39/75

60.3±10.7/

case-control design

III

arthroscopy

MRI

single-blinded

16/41

51.3±9.8

Jun Kawamata

2022

Japan

53

77

25/28

68.4±10/

case-control design

III

arthroscopy

CT

single-blinded

28/49

61.5±11.8

Mehmet Çetinkaya

2016

Turkey

141

78

93/48

57.85±10.44/

case-control design

III

arthroscopy

MRI

no-blinded

56/22

55.46±11.73

Mehmet Çetinkaya

2018

Turkey

28

28

22/6

48.71±9.66/

case-control design

III

arthroscopy

MRI

no-blinded

21/7

64.85±6.1

Siddhant K. Mehta

2020

USA

49

305

20/29

63.6±9.6/

cohort design

I

arthroscopy

MRI

no-blinded

131/174

62±9.1

Sizheng Zhu

2021

China

72

141

38/34

64.1±8.7/

case-control design

II

arthroscopy

CT

single-blinded

73/68

63.3±9.5

Sung-Hyun Yoon

2020

Korea

297

57

97/200

57.8±8.4/

case-control design

IV

arthroscopy

MRI

single-blinded

16/41

51.3±9.8

Wennan Xu

2022

China

184

276

126/58

62.55±9.03/

case-control design

III

arthroscopy

MRI

single-blinded

184/92

59.76±9.42

Experimental group: subscapularis tears; Control group: non-subscapularis tears; E: experimental group; C: control group; F: female; M: male.


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Qualitative assessment

Ten studies were included in this meta-analysis, including nine case-control studies and one cohort study. All ten studies were evaluated by the NOS. Seven studies received eight points, and three studies received seven points. The quality of each study is shown in [Table 3].

Table 3 The Newcastle-Ottawa Scale(NOS)for risk of bias assessment of cohort studies and case-control studies included in the meta-analysis.

Study

Selection

Comparability

Outcome

Quality score

1

2

3

4

5

6

7

Adam C. Watson

*

*

*

*

*

*

*

*

8

Eduardo A. Malavolta

*

*

*

*

*

*

*

*

8

Joong-Bae Seo

*

*

*

*

*

*

*

*

7

Jun Kawamata

*

*

*

*

*

*

*

*

8

Mehmet Çetinkaya2016

*

*

*

*

*

*

*

*

8

Mehmet Çetinkaya2018

*

*

*

*

*

*

*

*

7

Siddhant K. Mehta

*

*

*

*

**

*

*

*

8

Sizheng Zhu

*

*

*

*

*

*

*

*

8

Sung-Hyun Yoon

*

*

*

*

*

*

*

*

7

Wennan Xu

*

*

*

*

*

*

*

*

8

* = score of 1; ** = score of 2; * = score of 0. Key to items: 1 = representativeness of exposed cohort; 2 = selection of nonexposed; 3 = ascertainment of exposure; 4 = outcome not present at start; 5 = assessment of outcome; 6 = adequate follow-up length; 7 = adequacy of follow-up.


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Assessment of publication bias

Publication bias was evaluated by Egger’s test. There was no publication bias in any of the seven outcome measures (P>0.05) ([Table 4]).

Table 4 Assessment of publication bias.

Analyzed factor

Number of studies

Egger test

T

p value

Age in years

9

–0.92

0.389

CHD

7

–1.14

0.305

CO

3

–0.51

0.701

Female sex

9

1.19

0.273

Male sex

9

0.83

0.433

Dominant arm

4

1.19

0.355

LHB injury

3

–0.25

0.842

CHD: coracohumeral distance; CO: coracoid overlap; LHB: long head of the biceps tendon.


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Meta-analysis results

Age

Age was reported in nine studies [6] [9] [15] [17] [18] [19] [23] [25]. There were 1 994 patients included, the experimental group had 960 patients, and the control group had 1 034 patients. There was moderate heterogeneity (I2=74%, P=0.0004). Therefore, the random effects model was selected for meta-analysis, and the results suggested that the effect size was significantly larger in the experimental group than in the control group (WMD, 4.23 [95% CI, 2.32–6.15]; P<0.00001). This suggested that age may be a risk factor for SSC tears: the older the patient was, the more likely an SSC tendon injury would occur. The forest plot for age is shown in [Fig. 2].

Zoom Image
Fig. 2 Meta-analysis forest plot for age. IV, inverse variance methods.

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Female sex

Female sex was evaluated in nine studies [6] [9] [15] [17] [18] [19] [23] [24] [25]. There were 2 050 patients included, with 988 patients in the experimental group and 1 062 patients in the control group. There was no heterogeneity (I2=0%, P=0.81). Therefore, the fixed effects model was selected for meta-analysis, and the results suggested that there were no statistically significant differences in the effect size between the experimental and control groups (RR, 1.02 [95% CI, 0.94–1.12]; P=0.58). This suggested that female sex may not be a risk factor for SSC tears. The forest plot of age is shown in [Fig. 3].

Zoom Image
Fig 3 Meta-analysis forest plot of Sex-female. M-H, Mantel-Haenszel.

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Male sex

Male sex was evaluated in nine studies [6] [9] [15] [17] [18] [19] [23] [24] [25]. There were 2 050 patients included, and the experimental group had 988 patients, while the control group had 1 062 patients. There was no heterogeneity (I2=0%, P=0.89). Therefore, the fixed effects model was selected for meta-analysis, and the results suggested that there were no statistically significant differences in effect size between the experimental group and the control group (RR, 0.97 [95% CI, 0.88–1.07]; P=0.57). This suggested that male sex may not be a risk factor for SSC tears. The forest plot for the male sex is shown in [Fig. 4].

Zoom Image
Fig. 4 Meta-analysis forest plot of Sex-male. M-H, Mantel-Haenszel.

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Coracohumeral distance (CHD)

A total of 1 586 patients were included in seven studies [6] [9] [17] [19] [20] [23] [25]; the experimental group had 911 patients, and the control group had 675 patients. There was moderate heterogeneity (I2=55%, P=0.04). The results suggested that the effect size was significantly lower in the experimental group than in the control group (WMD, –1.03 [95% CI, –1.17 – –0.88]; P<.00001). We reviewed all studies and found that five studies used single blinding, and two studies did not. Therefore, we conducted a subgroup analysis of this factor based on the presence or absence of blinding. The results were as follows: there was low heterogeneity among the five single-blinded studies (I2=34%, P=0.19); the experimental group had 717 patients, and the control group had 574 patients. The effect size was smaller in the experimental group than in the control group. There was also low heterogeneity between the two studies without blinding (I2=36%, P=0.21); the experimental group had 194 patients, and the control group had 101 patients. The effect size was smaller in the experimental group than in the control group. Therefore, the overall effect size in the experimental group was smaller than that in the control group in the fixed effects model meta-analysis. The forest plot for CHD is shown in [Fig. 5].

Zoom Image
Fig. 5 Meta-analysis forest plot for CHD. IV, inverse variance methods.

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Coracoid overlap (CO)

A total of 488 patients were included in three studies [9] [23] [24]; the experimental group had 241 patients, and the control group had 247 patients. There was no heterogeneity (I2=0%, P=0.48). Therefore, the fixed effects model was selected for meta-analysis, and the results suggested that the effect size in the experimental group was significantly larger than that in the control group (WMD, 1.98 [95% CI, 1.55–2.41]; P<.00001). This suggested that CO may be a risk factor for SSC tears. The forest plot for CO is shown in [Fig. 6].

Zoom Image
Fig. 6 Meta-analysis forest plot for CO. IV, inverse variance methods.

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Dominant arm

There were 1 092 patients included in the four studies [9] [15] [19] [25]; the experimental group had 532 patients, and the control group had 560 patients. There was no heterogeneity (I2=0%, P=0.77). Therefore, the fixed effects model was selected for meta-analysis, and the results suggested that there were no statistically significant differences between the effect size in the experimental group and the effect size in the control group (RR, 1.05 [95% CI, 0.94–1.17]; P=0.38). This suggested that the dominant arm may not be a risk factor for SSC tears. The forest plot for dominant arm is shown in [Fig. 7].

Zoom Image
Fig. 7 Meta-analysis forest plot of Dominant arm. M-H, Mantel-Haenszel.

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Injury of long head of the biceps (LHB) tendon

LHB injury was reported in three studies [6] [15] [17]. There were 907 patients included, with 283 patients in the experimental group and 624 patients in the control group. There was no heterogeneity (I2=0%, P=0.47). Therefore, the fixed effects model was selected for meta-analysis, and the results suggested that the effect size of the experimental group was larger than that of the control group, and it was statistically significant (RR, 4.98 [95% CI, 3.75–6.61]; P<.00001). This suggested that LHB injury may be a risk factor for SSC tears. The forest plot of LHB injury is shown in [Fig. 8].

Zoom Image
Fig. 8 Meta-analysis forest plot of LHB injury. M-H, Mantel-Haenszel.

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Discussion

Rotator cuff tears are common, significantly reduce people’s quality of life, and increase the economic burden on people, which increases the pressure on the social medical insurance system [26]. Rotator cuff tears are most common in the supraspinatus muscle, followed by the SSC muscle [27]. Many studies have shown that the incidence of SSC tears is 27.4%–69.1% in rotator cuff tear cases repaired under arthroscopy [28] [29] [30] [31]. Studies have shown that most SSC tears are associated with degenerative changes [15]. The diagnosis of SSC tears is still difficult and there is a risk of missed diagnosis. At present, MRI remains the gold standard for the preoperative diagnosis of rotator cuff tears, and many researchers have been committed to finding anatomic risk factors for SSC tears on MRI in an attempt to increase the sensitivity of the diagnosis of SSC tears by measuring these anatomical indicators on MRI.

Many studies have shown that the incidence of rotator cuff tears increases with age [32] [33]. In older adults, the amount of microvasculature in the tendon is significantly reduced, making rotator cuff tissues more prone to fibroangiogenesis, adipose deposition, atrophy, and calcification, which may contribute to rotator cuff tears [32] [34]. Studies have shown that the incidence of rotator cuff tears in patients over 60 years old is 5.07 times higher than in patients under 60 years old [35]. In this study, patients with SSC tears were older than those without SSC tears. However, there was heterogeneity in the studies included with this indicator (I2=74%, P<.0001). This may have been related to the patient’s country, economic status, study design and other factors, so the random effects model was selected for meta-analysis.

A systematic study showed that males were more prone to supraspinatus tears than females. Maria J. Leite et al. suggested that males were more prone to SSC injuries [13]. However, there were no significant differences in CHD and CO between men and women. Previous studies have shown no relationship between sex and SSC tears [15] [36]. In our study, there was no significant difference in the probability of SSC tears between men and women.

The CHD is a measurement of the shortest distance from the coracoid process cortex to the humeral cortex, and there are transverse positions and oblique sagittal positions. Relevant studies have shown that the normal value of the CHD on MRI is 8.7–11 mm [23] [37] [38]. Leite et al., suggested that the optimal sensitivity and specificity for predicting SSC tears was a CHD of 7.95 mm [13]. Xu et al., and Seo et al. showed that a decreased CHD was closely related to SSC tears and had high predictive value and diagnostic sensitivity [17] [25]. According to Zhu et al., there was a significant difference between affected and contralateral CHD in patients with SSC tears, and the bilateral discrepancy (ΔCHD) was closely related to SSC tears and subcoracoid impingement [9]. Other researchers believe that CHD is not significantly associated with SSC tears [23] [39]. There are many factors that impact the measurement of the CHD. For example, there is a difference between the measurement value when in the neutral position and the internal rotation position of the upper limb. Some studies have suggested that CHD values should be measured when the upper limb is in a neutral position [9] [17] [19]. Some studies have suggested that the value of the CHD should be measured when the upper limb is in an internal rotation position [8]. In addition, magnetic field strength, scan thickness, and other factors related to the MRI procedure will also affect the CHD measurement, thus affecting the diagnosis of SSC tears [3] [5] [6]. In our study, there were seven studies related to CHD, which were all measured in transverse positions with the patient’s upper limb in a standard neutral position. There was heterogeneity among the seven studies (I2=55%, P<.00001). We performed a subgroup analysis depending on whether blinding procedures were used, and this significantly reduced heterogeneity. We concluded that the CHD was significantly associated with SSC tears: in particular, the lower the CHD was, the more likely an SSC tear.

The distance between the glenoid and the tip of the coracoid process was defined as the CO, which was measured on the axial plane. Leite et al. showed that the CO had a strong predictive value for SSC tears, and when the CO value was 16.6 mm, the sensitivity and specificity for the prediction of SSC muscle tears reached the optimal value [13]. However, Zhu et al. found that a CO value of 10 mm had the most appropriate sensitivity and specificity for the prediction of SSC tears, and the predictive value was higher than that of CHD [9]. Cetinkaya et al. identified the CO as the most valuable predictor of SSC tears [23]. In our study, there were three studies related to CO, which were all measured in transverse positions, and the upper limbs were in the standard neutral position. There was no heterogeneity among the three studies. We concluded that CO was significantly associated with SSC tears: in particular, the higher the CO was, the more likely SSC tears were to occur.

The dominant arm, usually the right one, is the side that is preferred for most tasks. For example, most people use the right arm, so the right arm is the dominant arm. Relevant studies have shown that rotator cuff tears of the dominant arm are more likely to have symptoms [40]. In a study of 20 overhead athletes with no shoulder symptoms, Connor et al. found that 40% of dominant arms had partial or full-thickness rotator cuff tears [41]. Some studies suggest that rotator cuff tears are more likely to occur in the dominant arm [42]; however, other studies have found that there is no significant difference in the chance of supraspinatus tears between the dominant arm and the nondominant arm [27]. Our study included four studies involving the dominant arm, and there was no heterogeneity among these four studies. We concluded that there was no significant difference in the dominant arm with regard to SSC tears.

The LHB originates from supraglenoid tubercle of the scapula and passes through a skeletal fiber canal formed by the intertubercular sulcus of the humerus and the transverse ligament. It has anatomical proximity to the SSC and supraspinatus tendons. The stability of the LHB in the groove is conferred by the sling-like confluence of fibrous tissue originating from the coracohumeral ligament, superior glenohumeral ligament, articular capsule, supraspinal muscle, and SSC tendons [43] [44]. Upper SSC tears usually cause LHB instability and shoulder pain [45] [46]. Subluxation and dislocation of the LHB can cause damage to the SSC muscle [15] [16]. Studies have found that when the CHD is 7.7 mm and the CO is 18.9 mm, the prediction of LHB injury has good sensitivity and specificity [13] [17]. Our study included three studies involving LHB injury, and there was no heterogeneity among these three studies. We concluded that LHB injury was significantly associated with SSC tears.

Certainly, there are other risk factors related to SSC tears, such as coracoid distal length (CLD), coracoid proximal length (CLP), and coracoid angle (CA) [18] [36]. However, there are few studies evaluating these indicators. The different study designs, different evaluation methods, different imaging machine types, different measurement methods, and other factors caused differences in the measured results for these indicators among studies. Therefore, the combined meta-analysis could not be carried out, and the forced merging of data would have produced greater heterogeneity and lost analytical significance. Therefore, it is expected that an increasing number of high-quality studies will involve these indicators, which will be evaluated in a subsequent systematic review.

There are also some limitations in this study: (1) the included studies were conducted in different social and economic environments, different medical systems, different countries, and different ethnic groups, which may have led to heterogeneity among some outcome indicators. However, the results of these systematic reviews of studies from different countries and ethnic groups have a universality that might be considered beneficial. (2) This study considered only SSC tears, not the size or other features of the tears. (3) The number of included studies for some indicators was small, which may have affected the credibility of the results. Future studies should include studies with larger sample sizes. (4) The included studies lacked high-quality research evidence, which may have affected the credibility of this study. The shortcomings of this study provide an important direction for future research.


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Conclusion

Our study suggested that age, CHD, LHB injury, and CO can be used as predictors of SSC tears. It is helpful for surgeons to detect SSC tears and implement intervention measures in the early stages.


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Conflict of Interest

The authors declare that they have no conflict of interest.

Acknowledgements

Thanks to AJE company for polishing this article.


Correspondence

Dr. Yongping Cao
Peking University First Hospital
orthopedics
100034 Beijing
China   
Phone: 13911624418   

Publication History

Received: 05 April 2023

Accepted: 08 August 2023

Article published online:
11 October 2023

© 2023. The Author(s). This is an open access article published by Thieme under the terms of the Creative Commons Attribution-NonDerivative-NonCommercial-License, permitting copying and reproduction so long as the original work is given appropriate credit. Contents may not be used for commercial purposes, or adapted, remixed, transformed or built upon. (https://creativecommons.org/licenses/by-nc-nd/4.0/).

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Fig. 1 Flow diagram showing the study screening process.
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Fig. 2 Meta-analysis forest plot for age. IV, inverse variance methods.
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Fig 3 Meta-analysis forest plot of Sex-female. M-H, Mantel-Haenszel.
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Fig. 4 Meta-analysis forest plot of Sex-male. M-H, Mantel-Haenszel.
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Fig. 5 Meta-analysis forest plot for CHD. IV, inverse variance methods.
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Fig. 6 Meta-analysis forest plot for CO. IV, inverse variance methods.
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Fig. 7 Meta-analysis forest plot of Dominant arm. M-H, Mantel-Haenszel.
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Fig. 8 Meta-analysis forest plot of LHB injury. M-H, Mantel-Haenszel.