Literature DB >> 30519092

Nomogram application to predict overall and cancer-specific survival in osteosarcoma.

Weipeng Zheng1, Yuanping Huang1, Haoyi Chen2, Ning Wang1, Wende Xiao3, YingJie Liang3, Xin Jiang1, Wenzhou Su4, Shifeng Wen4.   

Abstract

PURPOSE: A prognostic nomogram was applied to predict survival in osteosarcoma patients. PATIENTS AND METHODS: Data collected from 2,195 osteosarcoma patients in the Surveillance, Epidemiology, and End Results (SEER) database between 1983 and 2014 were analyzed. Independent prognostic factors were identified via univariate and multivariate Cox analyses. These were incorporated into a nomogram to predict 3- and 5-year overall survival (OS) and cancer-specific survival (CSS) rates. Internal and external data were used for validation. Concordance indices (C-indices) were used to estimate nomogram accuracy.
RESULTS: Patients were randomly assigned into a training cohort (n=1,098) or validation cohort (n=1,097). Age at diagnosis, tumor site, histology, tumor size, tumor stage, use of surgery, and tumor grade were identified as independent prognostic factors via univariate and multivariate Cox analyses (all P<0.05) and then included in the prognostic nomogram. C-indices for OS and CSS prediction in the training cohort were 0.763 (95% CI 0.761-0.764) and 0.764 (95% CI 0.762-0.765), respectively. C-indices for OS and CSS prediction in the external validation cohort were 0.739 (95% CI 0.737-0.740) and 0.740 (95% CI, 0.738-0.741), respectively. Calibration plots revealed excellent consistency between actual survival and nomogram prediction.
CONCLUSION: Nomograms were constructed to predict OS and CSS for osteosarcoma patients in the SEER database. They provide accurate and individualized survival prediction.

Entities:  

Keywords:  SEER database; cancer-specific survival; nomogram; osteosarcoma; overall survival; prognosis

Year:  2018        PMID: 30519092      PMCID: PMC6235004          DOI: 10.2147/CMAR.S177945

Source DB:  PubMed          Journal:  Cancer Manag Res        ISSN: 1179-1322            Impact factor:   3.989


Introduction

Osteosarcoma, mainly originated from primitive malignant mesenchymal cells in bone,1 is the most common primary malignant bone tumor, typically affecting adolescents under 24 years of age with an estimated incidence of 0.34/100,000 per year.2 The metaphyses of long bones are the primary sites of most osteosarcomas, including distal femur, proximal humerus, and proximal tibia, with approximately 10% of osteosarcomas derived from the axial skeleton.3 Local swelling, pain, and restricted joint movement are the most common symptoms. Before the 1970s, amputation was still the main therapeutic measure for high-grade osteosarcoma because of the lack of adjuvant chemotherapy,4 which seriously affected patient quality of life and reduced the probability of survival. With the introduction of the adjuvant chemotherapy and limb salvage surgery, the survival rate rose from less than 20% to approximately 70%.5 Currently, wide resection together with adjuvant chemotherapy and limb reconstruction have been widely applied to treat high-grade osteosarcoma.6,7 Nevertheless, these options are often insufficient for patients with metastatic and recurrent osteosarcoma.1,8 Better comprehension of the prognostic variables of osteosarcoma can provide more assistance to guide therapeutic intervention, which contributes to prolonging survival and enhancing quality of life. Although previous studies focused on prognostic factors for osteosarcoma patients, including tumor size, response to chemotherapy, recurrence, and metastasis,9–11 these variables only served as a single index to evaluate prognosis, which limited their impact on a precise individualized survival prediction of osteosarcoma patients. Considering the limitation of the single factor, we sought to develop a novel prognostic model. In the present study, we constructed a nomogram, an efficient prognostic tool, to more precisely estimate an individual patient’s survival more precisely by integrating all prognostic factors for osteosarcoma patients. A prognostic nomogram is an ocular and effective tool based on statistical regression models.12 It can provide a graphic calculating scales method that can be used to estimate the probability of patient survival.13 A nomogram can improve the predictive accuracy of individual prognosis because of its strong robustness and better predictive accuracy.12–14 The Surveillance, Epidemiology, and End Results (SEER) dataset between 1983 and 2014 provided clinical information of osteosarcoma patients that allowed detailed analyses of survival of osteosarcoma. This cancer database covers approximately 30% of the overall US population.12 It is composed of 18 registries that contain clinical information on patients with tumors in the US.12 The purpose of current study was to construct effective prognostic nomograms to predict 3- and 5-year overall survival (OS) and cancer-specific survival (CSS) rates for osteosarcoma patients.

Patients and methods

Patient eligibility and variables

We identified all osteosarcoma patients listed in the SEER database, which collects anonymized clinical data from population-based cancer registries. Use of these clinical data does not require patients’ informed consent since no case-identifying information is provided.15 No ethics approval was sought for this study as the data used were from the publicly available, de-identified SEER database.16 All procedures were performed in accordance with the Helsinki Declaration (1964) and its later amendments or comparable ethical standards.16 SEER*Stat software (version 8.3.5; NCI, Bethesda, MD, USA) was used to acquire patient information. The inclusion criteria for osteosarcoma patients in the present study were as follows: Diagnosed with osteosarcoma (International Classification of Diseases for Oncology [ICD-O]: 9180, 9181, 9182, 9183, 9184, 9185, 9186, 9187, 9192, 9193, 9194, or 9200) as a primary malignancy between 1983 and 2014. Positive histological confirmation of osteosarcoma. Site limited to extremity (long or short bones of the upper or lower extremities) or axial location (skull, pelvis, spine, or ribs). Confirmation of histologic type of osteosarcoma. Known cause of death and survival months after diagnosis. The exclusion criteria for osteosarcoma patients in this study were: Unknown use of surgery. Unknown surgical stage. Unknown tumor size. Clinicopathological features including patient age, gender, histology, surgical stage, tumor size, tumor site, grade, marital status, race, use of surgery, and survival time were collected. The anatomic location of osteosarcoma was categorized as extremity (long or short bones of the upper or lower extremities) or axial (skull, pelvis, spine, or ribs). Low-grade tumors contained well- and moderately differentiated grades (ICD-O-3 Grades 1 and 2), and high-grade tumors contained poorly or undifferentiated grades (ICD-O-3 Grades 3 and 4). Cutoff values of age of diagnosis and tumor size were determined via X-tile software (Yale University, New Haven, CT, USA), which was previously shown to determine best cut-points of tumor variables.17 The optimal cutoff values of tumor size were categorized as small (<2.9 cm), intermediate (2.9–10.0 cm), and large (>10.0 cm) (Figure 1). The optimal age cutoffs were 25 and 51 years (Figure 1), so patients were categorized into three age groups (0–24 years, 25–51 years, or >51 years). According to American Joint Committee on Cancer (AJCC) staging system for bone sarcomas, surgical stage was categorized as localized, regional, or distant.18 Patients coded with “localized” disease were classified as disease confined to the periosteum, while those with “regional” disease had tumor extending beyond the periosteum but without distant metastasis. Patients with missing surgical stage data were excluded. Surgical resection was categorized as yes or no; data on the type of resection (eg, wide, marginal, or intralesional) could not be obtained from the SEER database. Race was categorized as white, black, or other (American Indian/Alaskan Native, Asian/Pacific Islander). In terms of chemotherapy and radiation, “No/Unknown” was used in the updated SEER dataset as a single option, impacting data completeness. These patients had no codes for radiation or chemotherapy in their medical records. Adding this information to the nomogram might have introduced relevant bias,12 so use of chemotherapy and radiation was not included as a variable.
Figure 1

Identification of optimal cutoff values of age of diagnosis (A–C) and tumor size (D–F) via X-tile analysis.

Notes: Optimal cutoff values of age were identified as 29 and 51 years based on overall survival. Optimal cutoff values of tumor size were identified as 8.9 and 13.9 cm based on overall survival. Histogram and Kaplan–Meier analysis were developed based on these cutoff values.

Statistical analysis

Based on the abovementioned inclusion and exclusion criteria, osteosarcoma patients were randomly divided into a training cohort (n=1,098) or validation cohort (n=1,097) to construct and validate nomograms. Chi-squared tests were used to compare clinical characteristics between the cohorts. Continuous and categorical variables are presented as the number of osteosarcoma patients with respective percentages. X-tile software was applied to calculate cutoff values for tumor size and age of diagnosis based on OS information (Figure 1). The prognostic factors (age at diagnosis, gender, primary site, tumor size, histology, surgical stage, grade, marital status, race, use of surgery, etc) were further evaluated via univariate and multivariate Cox proportional hazards regression analyses. Hazard ratios and corresponding 95% CI of variables were also calculated. OS and CSS were the two primary endpoints. Survival times were calculated from the date of disease diagnosis to the date of death from any disease cause (OS) or death from osteosarcoma (CSS). Prognostic nomograms for 3- and 5-year OS and 3- and 5-year CSS were constructed according to the univariate and multivariate Cox analyses. Internal and external validations of the prognostic nomogram were performed. Harrell’s concordance-index (C-index) was applied to evaluate prognostic nomogram performance. This C-index was a useful evaluation value similar to calculating the area under the receiver operating characteristic curve.19 C-indices range from 0.5 to 1.0, indicating total chance and perfect matching, respectively.20 Calibration curves were constructed to compare consistency between predicted and observed survival. Chi-squared tests and univariate and multivariate Cox analyses were performed with SPSS 22.0 software (IBM Corp, Armonk, NY, USA). rms Package in R software (version 3.3.1) was used to construct and validate prognostic nomograms. Differences were considered significant at two-sided P<0.05.

Results

Patient baseline characteristics

The SEER database contained 2,195 osteosarcoma patients between 1983 and 2014, including 1,098 patients in the training cohort and 1,097 patients in the validation cohort. The training cohort was used to construct and internally validate the nomogram, and the validation cohort was used for external validation. In the training cohort, 363 patients died from osteosarcoma, and 32 patients died from other causes. In the validation cohort, 356 patients died from osteosarcoma, and 37 patients died from other causes. The osteosarcoma patients’ characteristics are listed in Table 1. Of these patients, 981 (44.7%) patients were females and 1,214 (55.3%) patients were males. The most common primary location of these osteosarcoma patients was an extremity (80.8%), and 19.2% had a primary axial site. With regard to tumor stage, regional disease (48.0%) was most frequent, followed by localized disease (32.8%) and distant disease (19.1%). In both cohorts, the majority of patients were children or adolescents (<25 years; 63.2%). Most tumors were <8.9 cm (51.8%). Most of the patients in our study had received surgical treatment (91.4%). There were no significant differences between the training and validation cohorts.
Table 1

Baseline demographic and clinical characteristics of patients with osteosarcoma

VariablesTraining cohort (n=1,098)Validation cohort (n=1,097)Total (n=2,195)P

Surgery, n, %0.399
 No898.1%1009.1%1898.6%
 Yes1,00991.9%99790.9%200691.4%
Sex, n, %0.507
 Female48344.0%49845.4%98144.7%
 Male61556.0%59954.6%1,21455.3%
Age (years), n, %0.592
 <2569363.1%69463.3%1,38763.2%
 >5112711.6%14012.8%26712.2%
 25–5127825.3%26324.0%54124.6%
Tumor site, n, %0.118
 Axial22520.5%19617.9%42119.2%
 Extremity87379.5%90182.1%1,77480.8%
Histology, n, %0.176
 Conventional osteosarcoma66360.4%69263.1%1,35561.7%
 Chondroblastic osteosarcoma18616.9%14313.0%32915.0%
 Fibroblastic osteosarcoma787.1%655.9%1436.5%
 Telangiectatic osteosarcoma423.8%393.6%813.7%
 Osteosarcoma in Paget disease of bone80.7%70.6%150.7%
 Small cell osteosarcoma80.7%131.2%211.0%
 Central osteosarcoma262.4%373.4%632.9%
 Intraosseous well differentiated osteosarcoma20.2%20.2%40.2%
 Parosteal osteosarcoma635.7%807.3%1436.5%
 Periosteal osteosarcoma181.6%131.2%311.4%
 High-grade surface osteosarcoma40.4%60.5%100.5%
Tumor stage, n, %0.273
 Localized37734.3%34431.4%72132.8%
 Regional52147.4%53348.6%1,05448.0%
 Distant20018.2%22020.1%42019.1%
Size, n, %0.373
 <8.957852.6%56051.0%1,13851.8%
 >13.918416.8%20919.1%39317.9%
 8.9–13.933630.3%32829.9%66430.3%
Grade, n, %0.584
 High93885.4%92884.6%1,86685.0%
 Low16014.6%16915.4%32915.0%
Marital0.950
 Married84276.7%84076.6%1,68276.6%
 Unmarried25623.3%25723.4%51323.4%
Year of diagnosis0.810
 1983–1992514.6%474.3%984.5%
 1993–200227425.0%28526.0%55925.5%
 2003–201477370.4%76569.7%1,53870.1%
Race0.341
 Black18316.7%16715.2%35015.9%
 Other11510.5%1019.2%2169.8%
 White80072.9%82975.6%1,62974.2%

Prognostic factors for OS and CSS

In the training cohort, data from 1,098 osteosarcoma patients were included in univariate and multivariate analyses to identify independent prognostic factors for OS and CSS. As is shown in Tables 2 and 3, gender, age at diagnosis, tumor site, histology, tumor size, tumor stage, use of surgery, tumor grade, and marital status were significantly associated with OS and CSS in the univariate analysis. These nine factors were further selected to conduct the multivariate Cox analysis in order to control for confounding variables. The multivariate Cox analysis revealed that seven factors including age at diagnosis, tumor site, histology, tumor size, tumor stage, use of surgery, and tumor grade were independent prognostic factors for OS and CSS.
Table 2

Univariate and multivariate analyses of overall survival in the training cohort

CharacteristicsUnivariate analysisPMultivariate analysis
HR95% CIP

Sex<0.001
 FemaleReference
 Male1.1830.954–1.4660.126
Age (years)<0.001
 <25Reference
 >512.4221.718–3.414<0.001
 25–511.3781.009–1.8830.044
Tumor site<0.001
 AxialReference
 Extremity0.5720.442–0.740<0.001
Histology<0.001
 Conventional osteosarcomaReference
 Chondroblastic osteosarcoma0.8020.605–1.0640.125
 Fibroblastic osteosarcoma0.8030.537–1.2000.285
 Telangiectatic osteosarcoma1.3360.844–2.1170.217
 Osteosarcoma in Paget disease of bone2.3751.121–5.0320.024
 Small cell osteosarcoma0.3370.047–2.4090.278
 Central osteosarcoma0.6340.281–1.4300.272
 Intraosseous well-differentiated osteosarcoma<0.0010.000–7.603E+800.933
 Parosteal osteosarcoma1.0010.487–2.0580.998
 Periosteal osteosarcoma0.2010.028–1.4410.110
 High grade surface osteosarcoma1.0400.145–7.4590.969
Tumor stage<0.001
 LocalizedReference
 Regional1.6471.248–2.174<0.001
 Distant4.8863.580–6.666<0.001
Surgery<0.001
 NoReference
 Yes0.4600.339–0.623<0.001
Size<0.001
 <8.9Reference
 >13.92.1411.617–2.835<0.001
 8.9–13.91.3911.094–1.7680.008
Grade<0.001
 HighReference
 Low0.4460.287–0.694<0.001
Marital<0.001
 MarriedReference
 Unmarried1.2500.930–1.6810.139
Year of diagnosis0.427
 1983–1992NI
 1993–2002
 2003–2014
Race0.917
 BlackNI
 Other
 White
Table 3

Univariate and multivariate analyses of cancer-specific survival in the training cohort

CharacteristicsUnivariate analysisPMultivariate analysis
HR95% CIP

Sex<0.001
 FemaleReference
 Male1.1640.931–1.4560.183
Age (years)<0.001
 <25Reference
 >512.1751.514–3.124<0.001
 25–511.3710.990–1.8990.057
Tumor site<0.001
 AxialReference
 Extremity0.5410.414–0.708<0.001
Histology<0.001
 Conventional osteosarcomaReference
 Chondroblastic osteosarcoma0.7820.581–1.0520.104
 Fibroblastic osteosarcoma0.7970.521–1.2200.297
 Telangiectatic osteosarcoma1.4690.925–2.3310.103
 Osteosarcoma in Paget disease of bone2.7911.308–5.9570.008
 Small cell osteosarcoma0.3590.050–2.5700.308
 Central osteosarcoma0.6830.302–1.5430.360
 Intraosseous well-differentiated osteosarcoma<0.0010.000–6.386E+850.935
 Parosteal osteosarcoma0.9430.443–2.0100.880
 Periosteal osteosarcoma0.2140.030–1.5320.125
 High grade surface osteosarcoma1.1020.154–7.9060.923
Tumor stage<0.001
 LocalizedReference
 Regional1.7821.326–2.397<0.001
 Distant5.2673.792–7.316<0.001
Surgery<0.001
 NoReference
 Yes0.4610.336–0.633<0.001
Size<0.001
 <8.9Reference
 >13.92.2321.667–2.987<0.001
 8.9–13.91.4351.116–1.8450.005
Grade<0.001
 HighReference
 Low0.5020.320–0.7870.03
Marital<0.001
 MarriedReference
 Unmarried1.2530.918–1.7090.155
Year of diagnosis0.552
 1983–1992NI
 1993–2002
 2003–2014
Race0.910
 BlackNI
 Other
 White

Construction and validation of the OS and CSS nomograms

The significant independent factors of age at diagnosis, tumor site, histology, tumor size, tumor stage, use of surgery, and tumor grade were incorporated to create the prognostic nomograms for estimating the 3- and 5-year OS and CSS of osteosarcoma patients (Figure 2). The nomogram gives every prognostic variable a score on the point scale (Table 4). By adding up these scores to the total on the bottom scale, the 3- and 5-year OS and CSS of osteosarcoma patients can be predicted.
Figure 2

Nomograms to predict 3- and 5-year overall survival (A) and cancer-specific survival (B) for osteosarcoma patients.

Notes: Vertical line between each variable and points scale can be drawn to acquire points of each variable. Predicted survival rate was calculated according to the total points by drawing a vertical line from Total Points scale to overall survival or cancer-specific survival scale. A, conventional osteosarcoma; B, chondroblastic osteosarcoma; C, fibroblastic osteosarcoma; D, telangiectatic osteosarcoma; E, osteosarcoma in Paget disease of bone; F, small cell osteosarcoma; G, central osteosarcoma; H, intraosseous well-differentiated osteosarcoma; I, parosteal osteosarcoma; J, periosteal osteosarcoma; K, high-grade surface osteosarcoma.

Table 4

Detailed scores of prognostic factors in the overall and cancer-specific survival nomograms

CharacteristicOS nomogramCSS nomogram

Age (years)
 <2500
 >512.01.6
 25–510.90.8
Tumor site
 Axial1.11.1
 Extremity00
Histology
 A (9180)8.38.1
 B (9181)7.97.7
 C (9182)7.97.7
 D (9183)8.98.8
 E (9184)10.010.0
 F (9185)6.26.3
 G (9186)7.57.5
 H (9187)00
 I (9192)8.38.0
 J (9193)5.25.3
 K (9194)8.38.3
Tumor stage
 Localized00
 Regional0.91.0
 Distant3.13.0
Surgery
 No1.51.4
 Yes00
Size
 <8.900
 >13.91.51.4
 8.9–13.90.60.6
Grade
 High1.61.3
 Low00

Notes: A, conventional osteosarcoma; B, chondroblastic osteosarcoma; C, fibroblastic osteosarcoma; D, telangiectatic osteosarcoma; E, osteosarcoma in Paget disease of bone; F, small cell osteosarcoma; G, central osteosarcoma; H, intraosseous well-differentiated osteosarcoma; I, parosteal osteosarcoma; J, periosteal osteosarcoma; K, high-grade surface osteosarcoma.

Prognostic nomogram validation was conducted both internally and externally (Figure 3). Internal validation in the training cohort showed that the C-index values for nomogram predictions of OS and CSS were 0.763 (95% CI 0.761–0.764) and 0.764 (95% CI 0.762–0.765), respectively. Similarly, the corresponding C-index values in the external validation cohort were 0.739 (95% CI 0.737–0.740) and 0.740 (95% CI 0.738–0.741). These results confirm that our prognostic nomograms were reasonably accurate. The calibration plots (Figure 3) demonstrated excellent agreement between actual survival and nomogram prediction.
Figure 3

Internal calibration plots of 3-year (A) and 5-year (B) overall survival nomogram calibration curves; 3-year (C) and 5-year (D) cancer-specific survival nomogram calibration curves. External calibration plots of 3-year (E) and 5-year (F) overall survival nomogram calibration curves; 3-year (G) and 5-year (H) cancer-specific survival nomogram calibration curves.

Notes: The cohort was divided into five subgroups with the equal sample size for present internal validation. The dashed line represents an excellent match between actual survival outcome (Y-axis) and nomogram prediction (X-axis). Closer distances between dashed line and points indicated higher prediction accuracy.

In summary, we constructed and validated the nomogram to estimate 3- and 5-year OS and CSS for osteosarcoma patients. Based on an individual osteosarcoma patient’s prognostic factors, we can obtain a score associated with each prognostic factor on the nomogram point scale and calculate the total score. We can then evaluate 3- and 5-year survival probability by projecting the total points to the total score scale of the nomogram. As an example, an 18-year-old patient was diagnosed with an axial chondroblastic osteosarcoma with a primary tumor size of 10.0 cm that was high grade. This patient was found to have regional disease and underwent surgery. According to our nomograms, the patient has 12.1 and 11.7 points in OS and CSS, respectively. The 3-year OS and CSS rates of this osteosarcoma were 0.72 and 0.69, respectively, while the corresponding 5-year rates were 0.62 and 0.62.

Discussion

Multiple prognostic factors can affect osteosarcoma patient survival, but previous studies did not integrate overall prognostic factors. A single prognostic index may impose limitations on estimating an individual patient’s survival prognosis. The nomogram is a common statistical tool that can provide satisfactory accuracy and robustness to precisely predict an individual patient’s survival probability.21 Kim et al constructed a prognostic nomogram for nonmetastatic osteosarcoma patients that could estimate and predict metastasis risk better than the AJCC staging system or tumor necrosis rate alone.22 Xia et al also devised a nomogram to further predict the survival of osteosarcoma patients after surgical resection.23 However, these studies were designed without validation, so their results might not be relevant in other populations due to potential bias. Kim et al developed a high-performance nomogram to predict the probability of metastasis in Enneking stage IIB extremity osteosarcoma using the medical records of 91 patients who had undergone surgery.24 However, the small sample size was a significant limiting factor, and the generalizability of this nomogram should be validated in larger populations. In the present study, we constructed convenient and comprehensive prognostic nomograms using data from 2,195 osteosarcoma cases in the SEER dataset, which allowed us to calculate 3- and 5-year OS and CSS rates for osteosarcoma patients. To accurately select the prognostic factors, we performed univariate log-rank and multivariate Cox analysis to identify independent prognostic factors. The results showed that age at diagnosis, tumor site, histology, tumor size, tumor stage, use of surgery, and tumor grade are independent prognostic factors for the survival of patients with osteosarcoma. In the current study, within the period from 1984 to 2014, year of diagnosis was not found to be independently associated with OS or CSS. One possible explanation is that progress made in clinical information has not been as successful for osteosarcoma. Similar approach has been taken in previous investigations.25,26 In previous studies, increasing patient age was associated with a statistically significant decrease in the survival prognosis of osteosarcoma patients.26–28 Ek et al reported that osteosarcoma patients older than 40 had worse survival outcomes.29 Similarly, we identified increasing patient age as an independent negative prognostic factor for osteosarcoma patients. Our analysis used X-tile software to stratify the data of age based on status and survival time. It identifies the best cut-points of variables and was initially applied in breast malignancy. We determined that the optimal age cut-points of osteosarcoma patients were 25 and 51 years. Tumor size was also one of the key measures of survival prognosis of osteosarcoma patients. Several previous studies reported that patients with larger tumors had a poorer prognosis and decreased survival rate.10,30,31 We also identified larger tumor size as an independent prognostic factor of shorter survival. To obtain the best cut-points for tumor size, we again used X-tile software for data stratification. The results showed that 8.9 and 13.9 cm were the optimal cutoff values. We also observed that adequate use of limb salvage surgery had a significant effect on osteosarcoma patient survival outcomes. Previous studies reported similar results.9,28,32 In a previous study, the tumor site and stage were reported as the most significant prognostic factors for osteosarcoma patients.32 These tumors appear mostly in the metaphyses of long bones, with approximately 10% of osteosarcomas occurring in the axial skeleton.33 Seker et al reported that osteosarcoma patients with extremity primary tumors have better survival prognoses than those with non-extremity tumors.32 Other groups also found that an axial primary site of osteosarcoma was associated with considerably worse survival outcomes.33–35 The present study also demonstrated that tumor site influences the survival of osteosarcoma patients. With regard to the tumor stage at diagnosis, several groups reported that osteosarcoma patients with metastases have a significantly worse survival prognosis.1,10,36,37 Patients with metastases may have better relative outcomes if they had only lung metastases and underwent curative metastasectomy.8 Consistent with these findings, we showed that osteosarcoma patients with distant metastases had a higher risk of death. We also identified tumor grade and histology as independent prognostic for osteosarcoma patients, which is in line with previous studies.38,39 Jawad et al26 demonstrated that Paget’s osteosarcoma had significantly worse prognosis compared with all other histological subtypes. Their analysis of different histological subtypes confirmed the results reported by Damron et al.40 Jawad et al26 also reported that fibroblastic osteosarcoma had significantly better prognosis compared with conventional osteosarcoma, which was similar to our results. By integrating the abovementioned independent prognostic factors, we created prognostic nomograms that offer an effective and functional method to estimate 3- and 5-year OS and CSS for osteosarcoma patients. These nomograms can improve the accuracy of predicting individual survival outcomes of osteosarcoma patients at certain time points. Although the prognostic nomograms in the present study showed good predictive ability, there are some limitations which should be taken into consideration. First, the data on radiotherapy and chemotherapy were limited in the SEER database, which might have led to incompleteness of several meaningful clinicopathological parameters and caused other relevant bias. For this reason, chemotherapy or radiation use was not incorporated in our study. Second, since our study was retrospective, it is inevitable that certain patient data were missing. This might have decreased the number of eligible cases. Third, our findings will be more reliable if the nomogram model is externally validated using another independent, large-scale dataset; this would verify whether our results are universally applicable. Despite these limitations, our prognostic nomogram is a significant and effective model for accurately predicting the individual survival outcomes of osteosarcoma patients.

Conclusion

The present study identified age at diagnosis, tumor site, histology, tumor size, tumor stage, use of surgery, and tumor grade as independent prognostic variables for both the OS and CSS rates of osteosarcoma patients. These independent prognostic variables were integrated to build a nomogram prognosis evaluation model for osteosarcoma patients. These offer a more reliable and accurate prediction of osteosarcoma patient survival. Utilizing our nomogram, the 3- and 5-year OS and CSS rates for osteosarcoma patients can be estimated, enabling surgeons to assess personalized survival probability and identify mortality risk.
  39 in total

Review 1.  Multivariable prognostic models: issues in developing models, evaluating assumptions and adequacy, and measuring and reducing errors.

Authors:  F E Harrell; K L Lee; D B Mark
Journal:  Stat Med       Date:  1996-02-28       Impact factor: 2.373

Review 2.  Nomograms in oncology: more than meets the eye.

Authors:  Vinod P Balachandran; Mithat Gonen; J Joshua Smith; Ronald P DeMatteo
Journal:  Lancet Oncol       Date:  2015-04       Impact factor: 41.316

3.  Nomograms for predicting local recurrence, distant metastases, and overall survival for patients with locally advanced rectal cancer on the basis of European randomized clinical trials.

Authors:  Vincenzo Valentini; Ruud G P M van Stiphout; Guido Lammering; Maria Antonietta Gambacorta; Maria Cristina Barba; Marek Bebenek; Franck Bonnetain; Jean-Francois Bosset; Krzysztof Bujko; Luca Cionini; Jean-Pierre Gerard; Claus Rödel; Aldo Sainato; Rolf Sauer; Bruce D Minsky; Laurence Collette; Philippe Lambin
Journal:  J Clin Oncol       Date:  2011-07-11       Impact factor: 44.544

4.  Prognostic factors in high-grade osteosarcoma of the extremities or trunk: an analysis of 1,702 patients treated on neoadjuvant cooperative osteosarcoma study group protocols.

Authors:  Stefan S Bielack; Beate Kempf-Bielack; Günter Delling; G Ulrich Exner; Silke Flege; Knut Helmke; Rainer Kotz; Mechthild Salzer-Kuntschik; Matthias Werner; Winfried Winkelmann; Andreas Zoubek; Heribert Jürgens; Kurt Winkler
Journal:  J Clin Oncol       Date:  2002-02-01       Impact factor: 44.544

5.  Limb preservation surgery with extracorporeal irradiation in the management of malignant bone tumor: the oncological outcomes of 101 patients.

Authors:  A M Hong; S Millington; V Ahern; G McCowage; R Boyle; M Tattersall; L Haydu; P D Stalley
Journal:  Ann Oncol       Date:  2013-07-12       Impact factor: 32.976

6.  Effect of erroneous surgical procedures on recurrence and survival rates for patients with osteosarcoma.

Authors:  Miguel A Ayerza; D Luis Muscolo; Luis A Aponte-Tinao; German Farfalli
Journal:  Clin Orthop Relat Res       Date:  2006-11       Impact factor: 4.176

7.  X-tile: a new bio-informatics tool for biomarker assessment and outcome-based cut-point optimization.

Authors:  Robert L Camp; Marisa Dolled-Filhart; David L Rimm
Journal:  Clin Cancer Res       Date:  2004-11-01       Impact factor: 12.531

8.  Osteosarcoma, chondrosarcoma, and Ewing's sarcoma: National Cancer Data Base Report.

Authors:  Timothy A Damron; William G Ward; Andrew Stewart
Journal:  Clin Orthop Relat Res       Date:  2007-06       Impact factor: 4.176

9.  Nomograms to Predict Individual Prognosis of Patients with Primary Small Cell Carcinoma of the Bladder.

Authors:  Fan Dong; Yifan Shen; Fengbin Gao; Xiao Shi; Tianyuan Xu; Xianjin Wang; Xiaohua Zhang; Shan Zhong; Minguang Zhang; Shanwen Chen; Zhoujun Shen
Journal:  J Cancer       Date:  2018-03-08       Impact factor: 4.207

10.  Postoperative nomogram to predict the probability of metastasis in Enneking stage IIB extremity osteosarcoma.

Authors:  Seung Hyun Kim; Kyoo-Ho Shin; Ha Yan Kim; Yong Jin Cho; Jae Kyoung Noh; Jin-Suck Suh; Woo-Ick Yang
Journal:  BMC Cancer       Date:  2014-09-12       Impact factor: 4.430

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  20 in total

1.  Prognostic nomograms to predict overall survival and cancer-specific survival in patients with pelvic chondrosarcoma.

Authors:  Li Chen; Cheng Long; Jiaxin Liu; Xin Duan; Zhou Xiang
Journal:  Cancer Med       Date:  2019-07-29       Impact factor: 4.452

2.  Prognostic Factors and Nomograms to Predict Overall and Cancer-Specific Survival for Children with Wilms' Tumor.

Authors:  Fucai Tang; Hanbin Zhang; Zechao Lu; Jiamin Wang; Chengwu He; Zhaohui He
Journal:  Dis Markers       Date:  2019-12-03       Impact factor: 3.434

3.  Prognostic Factors in Patients With Osteosarcoma With the Surveillance, Epidemiology, and End Results Database.

Authors:  Peng Fu; Yu Shi; Gang Chen; Yaohua Fan; Yanhong Gu; Zhenzhen Gao
Journal:  Technol Cancer Res Treat       Date:  2020 Jan-Dec

4.  Long noncoding RNA TTN-AS1 enhances the malignant characteristics of osteosarcoma by acting as a competing endogenous RNA on microRNA-376a thereby upregulating dickkopf-1.

Authors:  Shenglong Li; Fei Liu; Yi Pei; Wei Wang; Ke Zheng; Xiaojing Zhang
Journal:  Aging (Albany NY)       Date:  2019-09-16       Impact factor: 5.682

5.  LncRNA KCNQ1OT1 sponges miR-34c-5p to promote osteosarcoma growth via ALDOA enhanced aerobic glycolysis.

Authors:  Yifei Shen; Jingwen Xu; Xiaohui Pan; Yunkun Zhang; Yiping Weng; Dong Zhou; Shisheng He
Journal:  Cell Death Dis       Date:  2020-04-24       Impact factor: 8.469

6.  Prognostic nomograms and Aggtrmmns scoring system for predicting overall survival and cancer-specific survival of patients with kidney cancer.

Authors:  Yuan Zhou; Rentao Zhang; Yinman Ding; Zhengquan Wang; Cheng Yang; Sha Tao; Chaozhao Liang
Journal:  Cancer Med       Date:  2020-02-22       Impact factor: 4.452

7.  Functional variant of IL33 is associated with survival of osteosarcoma patients.

Authors:  Qingxi Lin; Jingjing Han; Qi Sun; Li Wen; Shoufeng Wang
Journal:  J Bone Oncol       Date:  2019-12-02       Impact factor: 4.072

8.  Prognostic factors in osteosarcoma: A study level meta-analysis and systematic review of current practice.

Authors:  Sun Xin; Guo Wei
Journal:  J Bone Oncol       Date:  2020-02-21       Impact factor: 4.072

9.  Comprehensive analysis of prognostic tumor microenvironment-related genes in osteosarcoma patients.

Authors:  Chuan Hu; Chuan Liu; Shaoqi Tian; Yuanhe Wang; Rui Shen; Huili Rao; Jianyi Li; Xu Yang; Bo Chen; Lin Ye
Journal:  BMC Cancer       Date:  2020-08-27       Impact factor: 4.430

10.  The impact of previous cancer on overall survival of bladder cancer patients and the establishment of nomogram for overall survival prediction.

Authors:  Zhengquan Wang; Yuan Zhou; Chao Guan; Yinman Ding; Sha Tao; Xiaoqi Huang; Liang Chen; Fei Zhang; Rentao Zhang
Journal:  Medicine (Baltimore)       Date:  2020-09-18       Impact factor: 1.817

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