Literature DB >> 28881771

Prediction of EGFR and KRAS mutation in non-small cell lung cancer using quantitative 18F FDG-PET/CT metrics.

Ryogo Minamimoto1, Mehran Jamali1, Olivier Gevaert1, Sebastian Echegaray1, Amanda Khuong2, Chuong D Hoang2, Joseph B Shrager2, Sylvia K Plevritis1, Daniel L Rubin1, Ann N Leung1, Sandy Napel1, Andrew Quon1.   

Abstract

This study investigated the relationship between epidermal growth factor receptor (EGFR) and Kirsten rat sarcoma viral oncogene homolog (KRAS) mutations in non-small-cell lung cancer (NSCLC) and quantitative FDG-PET/CT parameters including tumor heterogeneity. 131 patients with NSCLC underwent staging FDG-PET/CT followed by tumor resection and histopathological analysis that included testing for the EGFR and KRAS gene mutations. Patient and lesion characteristics, including smoking habits and FDG uptake parameters, were correlated to each gene mutation. Never-smoker (P < 0.001) or low pack-year smoking history (p = 0.002) and female gender (p = 0.047) were predictive factors for the presence of the EGFR mutations. Being a current or former smoker was a predictive factor for the KRAS mutations (p = 0.018). The maximum standardized uptake value (SUVmax) of FDG uptake in lung lesions was a predictive factor of the EGFR mutations (p = 0.029), while metabolic tumor volume and total lesion glycolysis were not predictive. Amongst several tumor heterogeneity metrics included in our analysis, inverse coefficient of variation (1/COV) was a predictive factor (p < 0.02) of EGFR mutations status, independent of metabolic tumor diameter. Multivariate analysis showed that being a never-smoker was the most significant factor (p < 0.001) for the EGFR mutations in lung cancer overall. The tumor heterogeneity metric 1/COV and SUVmax were both predictive for the EGFR mutations in NSCLC in a univariate analysis. Overall, smoking status was the most significant factor for the presence of the EGFR and KRAS mutations in lung cancer.

Entities:  

Keywords:  18FDG-PET/CT; EGFR gene mutation; KRAS gene mutation; NSCLC; heterogeneity

Year:  2017        PMID: 28881771      PMCID: PMC5581070          DOI: 10.18632/oncotarget.17782

Source DB:  PubMed          Journal:  Oncotarget        ISSN: 1949-2553


INTRODUCTION

Epidermal growth factor receptor (EGFR) [1, 2], Kirsten rat sarcoma viral oncogene homolog (KRAS) [3] and anaplastic lymphoma kinase (ALK) [4] are all significant biomarkers for the management of non-small-cell lung cancer (NSCLC). EGFR is a member of a larger family of closely related transmembrane receptor tyrosine kinases (TK), which activate cell growth and replication, differentiation and survival [5, 6]. Mutations in the TK domain of the EGFR in NSCLC predict the response to TK inhibitors such as Gefitinib and Erlotinib [7-9]. KRAS exists downstream of EGFR and the EGFR pathway is altered by KRAS mutation [3]. However KRAS mutations are associated with lack of activity of the TK inhibitors [10]. ALK, the downstream serine-threonine kinase of EGFR signaling, rearranged tumors are not sensitive to EGFR TK inhibitors, but they are sensitive to ALK specific TK inhibitors such as Crizotinib [4]. Akt signaling is one of the main EGFR signaling pathways and includes the upregulation of glucose transporter (GLUT) 1 and 4 transporters [11, 12]. As a result, Akt activation may have a close relationship with EGFR mutations and fluorodeoxyglucose (FDG) uptake in NSCLC. [13, 14]. While the relationship between FDG uptake and EGFR mutations in NSCLC has previously been noted to have contradictory results [15, 16], and one notable study has shown that the KRAS mutations in lung cancer showed significantly higher FDG uptake than wild type (WT) cancer [17]. Tumor heterogeneity relates to both tumor development and therapeutic outcomes [18]. Moreover, clonal heterogeneity can be identified within the primary tumor ahead of identification of the metastases [19]. Intra-tumor heterogeneity appears to correlate to the EGFR mutations in NSCLC and may predict tumor responsiveness to TK inhibitors therapy [20, 21]. FDG uptake usually is not homogeneously distributed within the tumor, which can be caused by variations in necrosis [22], cellular proliferation [23] and hypoxia [24]. High intratumor heterogeneity therefore could potentially serve as a prognostic factor in NSCLC [25]. In this study, we investigate if there exists a relationship between EGFR mutations and/or KRAS mutations in NSCLC status and several FDG-PET/CT parameters such as maximum standardized uptake value (SUVmax), metabolic tumor volume (MTV), total lesion glycolysis (TLG), and tumor heterogeneity, in order to determine the FDG-PET/CT metrics that are most predictive of a gene mutation. Subjects were recruited and enrolled in this trial if they had suspected NSCLC based on a diagnostic CT scan. Subsequently, patients underwent a battery of testing that included FDG-PET/CT scanning and gene mutation testing. Gene mutations were investigated using tissues from surgically resected tumor for all patients.

RESULTS

Patient characteristics

The total number of enrolled patients was 182. Fifty-one cases were excluded due to any one or more of the following reasons: 1) margin of lesion not well defined (pneumonic form and central obstructive lesions on preoperative CT which was confirmed by a board-certified radiologist specializing in thoracic imaging), 2) gene mutation analysis not performed, and 3) histologic subtypes other than adenocarcinoma by pathological diagnosis. After the above exclusions, 131 patients (male: 86, female: 45, mean age ± SD: 67 ± 10, range 24–81yrs) met the eligibility criteria for this study and the clinical characteristics of these patients are listed in Table 1. In this study, lung cancer was more frequently identified in males (86/131, 65.6%), but there was no significant age difference between males and females. Lung carcinoma was primarily found in patients classified as current and former smokers (75.8%). The characteristics of identified lung lesions are shown in Table 2. The majority of patients enrolled in this study was clinical stage of IA or IB disease (92/131, 70.2%).
Table 1

Patient and lesion characteristics

CharacteristicNumberPercentage
Gender
 Male8665.6
 Female4534.4
 Total131100
Mean Age (range)
 Male68 ± 10 (24–86)-
 Female67 ± 10 (45–81)-
 Total67 ± 10 (24–86)-
Smoking status
 Current/former smoker99 (22/77)75.8
 Never smoker3224.2
Location
 Right lobe (RUL/RML/RLL)81 (48/11/22)61.8
 Left lobe (LUL/LLL)50 (32/18)38.2
Pathology
 Adenocarcinoma131100.0
Clinical and pathological staging
 IA6650.4
 IB2619.8
 IIA129.2
 IIB107.6
 IIIA129.2
 IV21.5
 Undefined32.3
Gene mutation (positive/negative/N/A)
EGFR32/95/4-
KRAS31/95/5-

RUL: right upper lobe, RML: right middle lobe, RLL: right lower lobe, LUL: left upper lobe, LLL: left lower lobe

Table 2

FDG uptake at the normal lung field (n = 131)

Area of lungRUFLUFRMFLMFRLFLLFBlood pool
SUVmean0.5 ± 0.10.5 ± 0.10.4 ± 0.20.5 ± 0.20.6 ± 0.30.6 ± 0.21.7 ± 0.4
Range0.2–0.90.2–1.10.1–1.30.2–1.20.1–1.80.3–1.30.8–2.9

RUF: right upper field, RMF: right middle field, RLF: right lower field, LUF: left upper field, LMF: left middle field, LLF: left lower field,

RUL: right upper lobe, RML: right middle lobe, RLL: right lower lobe, LUL: left upper lobe, LLL: left lower lobe RUF: right upper field, RMF: right middle field, RLF: right lower field, LUF: left upper field, LMF: left middle field, LLF: left lower field,

Background FDG uptake in normal lung parenchyma

Results are shown in Table 3. No significant difference was found between left and right lobe for upper area, middle area and the lower area respectively. FDG uptake in lower area was higher than upper area (p < 0.001) and middle area (p < 0.001). No significant factor (age, sex, smoking status, pack years and gene mutation) could be identified for the FDG uptake for normal lung.
Table 3

Result in the FDG parameters

FDG-PET ParameterMean ± SDAllEGFR mutationsP valueKRAS mutationsP value
(+)(−)(+)(−)
Metabolic tumor diameter (mm)33 ± 27(8–230)27 ± 13(8–53)34 ± 30(8–230)0.6036 ± 29(8–135)32 ± 27(8–230)0.75
SUVmax6.3 ± 5.9(0.7–36.7)4.2 ± 3.8(0.7–14.2)6.9 ± 3.8(0.8–36.7)0.0097.4 ± 7.6(0.9–36.7)5.9 ± 5.3(0.7–29.6)0.38
SUVmean3.8 ± 2.7(0.7–18.9)3.1 ± 2.3(0.8–10.0)4.0 ± 2.9(0.7–18.9)0.094.2 ± 3.6(0.7–18.9)6.9 ± 3.8(0.8–36.7)0.67
TLG109.2 ± 530.8(0.4–5577.5)17.6 ± 34.7(0.4–162.3)143.4 ± 623.5(0.5–5577.5)0.04269.4 ± 1028.1(0.7–5577.5)61.4 ± 203.9(0.4–1725.8)0.45
MTV14.5 ± 38.8(0.3–295.1)6.2 ± 10.4(0.3–50.8)17.6 ± 45.0(0.3–295.1)0.2924.9 ± 65.8(0.7–295.1)11.2 ± 25.2(0.3–137.9)0.59
SD (>1cm)1.20 ± 1.16(0.08–6.07)0.90 ± 1.17(0.11–5.87)1.27 ± 1.17(0.08–6.07)0.021.30 ± 1.30(0.08–6.07)1.16 ± 1.13(0.11–5.96)0.65
1/COV (> 1cm)4.24 ± 2.01(1.51–17.91)5.10 ± 1.89(1.70–9.09)4.13 ± 2.34(1.51–17.91)0.0034.35 ± 2.49(1.70–15.13)4.34 ± 2.21(1.51–17.91)0.75
AUC (> 1cm)0.61 ± 0.12(0.28–0.86)0.66 ± 0.12(0.33–0.81)0.60 ± 0.12(0.28– 0.86)0.020.61 ± 0.12(0.28–0.78)0.61 ± 0.13(0.33–0.86)0.96
SD (> 2cm)1.35 ± 1.25(0.09–6.07)0.95 ± 1.23(0.11–5.87)1.52 ± 1.25(0.09–6.07)0.0061.45 ± 1.37(0.09–6.07)1.33 ± 1.23(0.11–5.96)0.76
1/COV (> 2cm)3.96 ± 1.53(1.51–8.93)4.93 ± 1.81(0.33–8.93)3.59 ± 1.25(1.51–7.67)0.0013.85 ± 1.36(1.69–7.67)3.98 ± 1.61(1.51–8.93)0.98
AUC (> 2cm)0.59 ± 0.12(0.28–0.81)0.66 ± 0.12(0.33–0.81)0.57 ± 0.12(0.28– 0.78)0.0070.61 ± 0.12(0.28– 0.78)0.58 ± 0.13(0.33– 0.81)0.37
SD (> 3cm)1.71 ± 1.39(0.09–6.07)1.39 ± 1.58(0.09–6.07)1.83 ± 1.58(0.09–6.07)0.111.92 ± 1.69(0.09–6.07)1.71 ± 1.33(0.19–5.96)0.72
1/COV (> 3cm)3.45 ± 1.48(1.50–8.92)4.03 ± 1.73(1.70–7.42)3.10 ± 1.07(1.51–7.67)0.123.55 ± 1.55(1.70–7.67)3.25 ± 1.23(1.51–7.42)0.38
AUC (> 3cm)0.53 ± 0.12(0.28–0.78)0.57 ± 0.12(0.33– 0.78)0.51 ± 0.11(0.28– 0.78)0.080.54 ± 0.14(0.28–0.78)0.52 ± 0.11(0.33– 0.77)0.68

SUV: Standardized uptake value, SUVmax: Maximum SUV, TLG: Total lesion glycolysis, MTV: Metabolic tumor volume. SD: standard deviation, COV: coefficient of variation, AUC: area under the curve of the cumulative SUV-volume histogram, range shown in parenthesis.

SUV: Standardized uptake value, SUVmax: Maximum SUV, TLG: Total lesion glycolysis, MTV: Metabolic tumor volume. SD: standard deviation, COV: coefficient of variation, AUC: area under the curve of the cumulative SUV-volume histogram, range shown in parenthesis.

Gene mutation analysis

EGFR gene mutations were confirmed in 32 of the 127 patients (25.2%). The KRAS gene mutation was confirmed in 31 of 126 patients (24.6%). FDG-PET/CT parameters showing a significant difference between EGFR (+) and EGFR- WT case were SUVmax, TLG, SD, 1/COV and AUC. In cases where the metabolic tumor diameter was greater than 3 cm, EGFR (+) and EGFR – WT had no significant correlation to the metabolic tumor diameter, tumor volume and the remaining tumor heterogeneity parameters. Further, no PET parameters appeared to correlate to the presence or absence of KRAS mutations (Table 4).
Table 4

Association between each indexes and EGFR and KRAS mutations status based on univariate analysis (p-values)

IndexEGFR mutationsKRAS mutationsAssociation
Age0.700.79-
Gender0.0470.06Female with EGFR mutations
Cancer staging0.540.68-
Smoking status (Current / former smoker vs never-smoker)< 0.0010.018Never-smoker with EGFR mutations, Current / former smoker with KRAS mutations
Pack Years0.0020.21Low pack year smoking history (mostly never-smoker regarded as smoking history with 0 year) with EGFR mutations.
Maximum metabolic tumor diameter0.260.66-
SUVmax0.0290.20Higher SUVmax with EGFR mutations
MTV0.160.09-
TLG0.260.06-
SD (> 1 cm)0.160.94-
1/COV (> 1 cm)0.0140.94Higher 1/COV with EGFR mutations
AUC (> 1 cm)0.0360.88Higher AUC with EGFR mutations
SD (> 2 cm)0.070.70-
1/COV (> 2 cm)< 0.0010.73Higher 1/COV with EGFR mutations
AUC (> 3 cm)0.0120.45-
SD (> 3 cm)0.440.46-
1/COV (> 3 cm)0.0080.98Higher 1/COV with EGFR mutations
AUC (> 3 cm)0.070.49-

MTV: metabolic tumor volume, TLG: total lesion glycolysis, SD: standard deviation, COV: coefficient of variation, AUC: area under the curve of the cumulative SUV-volume Histogram. Measurements within parentheses are indicated maximum metabolic tumor diameter

MTV: metabolic tumor volume, TLG: total lesion glycolysis, SD: standard deviation, COV: coefficient of variation, AUC: area under the curve of the cumulative SUV-volume Histogram. Measurements within parentheses are indicated maximum metabolic tumor diameter The univariate analysis between several parameters and EGFR and KRAS mutation are shown in Table 5. Never-smoker (i.e. no prior smoking history), low-pack-year smoking history, and female gender were significant factors for EGFR mutation and smoker (current and former) was a significant factor for KRAS mutation. The SUVmax of FDG uptake in lung lesion was significant predictor, but those of MTV and TLG were not significant. Of the multiple parameters regarding tumor heterogeneity, 1/COV was the only parameter that was predictive of the EGFR mutation that was not effected or dependent on the metabolic tumor volume diameter. The multivariate analysis showed smoking status was most significant predictor for EGFR mutation in lung cancer. No parameters were identified that was predictive or significantly correlated to the KRAS mutation in lung cancer. The number of cases with each index evaluated in this study are shown in Table 6.
Table 5

Multivariate analysis for the association between each indexes and EGRF mutation status (p- values)

IndexEGFR mutationsAssociation
Gender0.389
Smoking status (Current/former smoker vs never-smoker)< 0.001Never – smoker with EGFR mutations
SUVmax0.378
1/COV (> 1 cm)0.456

COV: coefficient of variation.

Table 6

Number of cases with each index

IndexEGFR mutations (+/−)KRAS mutations (+/−)Current/former smoker/never-smoker
Age32/9531/9522/77/32
Gender male16/6625/5917/56/13
Gender female16/296/365/21/19
Smoking status Current1/208/14-
Former smoker13/6220/54-
Never-smoker18/133/27-
Pack Years32/9531/9522/77/32
Maximum metabolic tumor diameter32/9531/9522/77/32
SUVmax32/9531/9522/77/32
MTV32/9531/9522/77/32
TLG32/9531/9522/77/32
SD (> 1 cm)27/8528/8420/70/26
1/COV (> 1 cm)27/8528/8420/70/26
AUC (> 1 cm)27/8528/8420/70/26
SD (> 2 cm)24/6524/6413/59/21
1/COV (> 2 cm)24/6524/6413/59/21
AUC (> 2 cm)24/6524/6413/59/21
SD (> 3 cm)12/4213/405/37/14
1/COV (> 3 cm)12/4213/405/37/14
AUC (> 3 cm)12/4213/405/37/14

MTV: metabolic tumor volume, TLG: total lesion glycolysis, SD: standard deviation, COV: coefficient of variation, AUC: area under the curve of the cumulative SUV-volume Histogram. Measurements within parentheses are indicated maximum metabolic tumor diameter

COV: coefficient of variation. MTV: metabolic tumor volume, TLG: total lesion glycolysis, SD: standard deviation, COV: coefficient of variation, AUC: area under the curve of the cumulative SUV-volume Histogram. Measurements within parentheses are indicated maximum metabolic tumor diameter

DISCUSSION

In the present study, we found that patients that were categorized as complete never-smoker predicted the presence of the EGFR mutation and current and former smoker predicted the presence of KRAS mutation. The SUVmax of FDG uptake in lung lesion were also significant parameters, while those of MTV and TLG were not significant. Of several parameters regarding tumor heterogeneity, 1/COV was the only significant factor which was not dependent on metabolic tumor diameter. The multivariate analysis showed never-smoker smoking status was the only significant factor for EGFR mutation, and that current and former smoker status was the only significant factor for KRAS mutation in lung cancer. EGFR mutations have been linked patients with adenocarcinoma, lack of prior smoking history, females, and Asians. Our results demonstrate that never-smoking (no prior smoking history) was the most significant predictive factor for presence of the EGFR mutation, which corroborates previously observed trends [26]. The frequency of KRAS mutation is not associated with age, gender and smoking history (regardless of pack years) [27]. Therefore, KRAS mutation defines a distinct molecular subset of the disease. KRAS mutations were found in tumors from both former/current smokers and never smokers. They are rare in never smokers and are less common in East Asian Vs. US/European patients [27]. Our interest was how tumor metabolism (inferred from PET imaging) could add significant value to predict gene mutations. The most popular metabolic parameter in lung cancer is the SUVmax, but SUVmax represents just a single point within the tumor even it is easy to measure. Several papers have reported relationship between FDG uptake in lung cancer and EGFR [17, 28–31] and KRAS gene mutations [17, 30]. Our study appears to show a positive correlation for SUVmax as significant factor for predicating EGFR mutation. We did not find a significant correlation between SUVmax to KRAS. TLG and MTV were not significant factors for predicting gene mutations (Table 4). This suggests that gene mutation can occur regardless of the size or volume of lung lesion since TLG and MTV are proportional to tumor size. Therefore conventional assessment based on tumor size appeared to be limited for the prediction of gene mutation in lung cancer. One of the novelties of our study was to evaluate the relationship between tumor heterogeneity and gene mutation (Table 4). In regards to tumor heterogeneity, prior studies commonly include both partial volume effects and noise as heterogeneity [32]. Several FDG-PET/CT metrics regarding tumor heterogeneity correlated to EGFR mutation, but 1/COV appears to be the most reliable due to the lack of dependence on lesion size. Yip et al. investigated the association between FDG-PET based radiomic features and somatic mutations in NSCLC. A significant relationship could be seen in SUVmax, MTV, minimum of SUV and several indexes obtained from texture based analysis for predicting EGFR mutations; on the other hand no index could be seen as predicting of KRAS mutations [33]. The key trend of representing tumor heterogeneity is texture based analysis [34, 35]. Several indexes were shown to have significant relationship with predicting EGFR gene mutations [33]. We did not adapt these methods in this study, because the methodology has not been standardized in terms of the software and indexes as described in each article. The 1/COV appears to have limited reliability in their robustness and repeatability, however we adopted PET edge method for tracing the edge of FDG uptake in tumor in order to minimize the measurement variance by the observer [36, 37]. The advantage for prediction of gene mutation in lung cancer was to select suitable therapeutic strategy for the patient with lung cancer, and it will be desirable if it could be possible by less invasive method. Stiles B et al. suggested that clinical stage IA lung cancer is frequently under staged in patients [38]. Goldstraw et al. reported that 30% to 70% of patients with completely resected disease experienced relapse and/or distant metastases [39]. It appeared that micrometastatic disease had already occurred at the some of cases with early-stage NSCLC. Therefore, adjuvant and/or neoadjuvant cisplatin-based chemotherapy is advised for patients with early-stage disease [40-42]. Neoadjuvant therapy has advantages for downstaging the tumor before surgery and thus increasing the chances of a complete resection. Several randomized clinical trials assessed the advantage of neoadjuvant treatment in patients with early stage disease. Although available data suggest a trend in survival benefit in preoperative chemotherapy, the majority of studies showed no statistically significant differences [43]. A phase II study of preoperative gefitinib in clinical stage I non-small-cell lung cancer demonstrated that tumor shrinkage was frequently seen in women, neversmokers and the EGFR expression (proven by biopsy) was a strong predictor of response [44]. Neoadjuvant chemotherapy has also been explored in patients with early-stage NSCLC. It is based on the rationale to be able to decrease micrometastases at distant sites and tumor burden preoperatively to increase resectability and overall survival. In a systematic review, Nair et al. concluded that increased tumor FDG uptake is associated with poorer survival in patients with stage I NSCLC. FDG uptake has the potential to be used as a biomarker for identifying stage I patients who are at increased risk of death or recurrence and therefore could identify candidates for participation in future trials of adjuvant therapy [45]. However, one of the limitations of neoadjuvant therapy is the inability to confirm gene mutations prior to surgical resection. The prediction of gene mutation in lung cancer can be advantageous for selecting patients who would best benefit from neoadjuvant therapy. The limitation of this study was that we have not yet obtained the result of patient's prognosis, therefore we could not report how FDG PET/CT could predict the prognosis nor its prognostic value when used in conjunction with, or compared against, smoking status.

MATERIALS AND METHODS

Study population

The Institutional Review Board and the Stanford Cancer Institute Scientific Review Committee approved this project and protocol. Written informed consent was obtained from all patients before participation in the study. Inclusion criteria were: 1) greater than 18 years-old at the time of radiotracer administration and 2) suspicion of lung cancer on preoperative CT scans by a board-certified radiologist specializing in thoracic imaging. Exclusion criteria were: 1) pneumonic form and central obstructive lesions on preoperative CT which was confirmed by a board-certified radiologist specializing in thoracic imaging.

Clinical data collection

We collected the following clinical variables from each patient: age, histology, sex and smoking status. After review of the histology of NSCLC, we eliminated subtypes of adenocarcinoma including bronchioloalveolar carcinoma (BAC) as defined in the previous pathological classification for lung adenocarcinoma. Smoking status was categorized as never-smoker, former smoker or current smoker.

EGFR and KRAS mutation testing

The tumor tissues were surgically resected for all patients. Mutation testing was done for both EGFR and KRAS using multiplex PCR followed by single nucleotide mutation detection using SNaPshot technology based on dideoxy single-base extension of oligonucleotide primers [46]. EGFR exons 18, 19, 20 and 21 were tested and KRAS exon 2. Mutations were combined irrespective of their location in the tested exons. Patients were categorized according to the mutation testing as EGFR mutated (EGFR+) and wild-type EGFR, and KRAS-mutated (KRAS+) and wild-type KRAS.

PET/CT protocol

FDG-PET/CT scans were acquired by using a standard clinical protocol at two sites, Stanford University Hospital (SUH) and Veterans Administration Palo Alto Health Care System (VAPAHCS). PET/CT images were acquired using either GE Discovery LS PET/CT (slice thickness, 3–5 mm) (GE Healthcare, Waukesha, WI, USA) at Stanford or GE Discovery VCT (slice thickness, 3.75 mm) (GE Health care, Waukesha, WI, USA) at VAPAHCS. At both sites, patients fasted for a minimum of 6 hours, a dose of 12 to 17 millicuries (mCi) of FDG was administered, and patients were scanned from the skull base to mid-thigh using multiple bed positions every 5 minutes approximately 45 to 60 minutes after injection. CT-attenuated data were reconstructed using ordered subset expectation maximization for both scanner sites.

Image analysis

Representative images are shown in Figure 1. Images were reviewed by two board-certified Nuclear Medicine physicians (RM, AQ) with 8 and 15 years experience respectively. MIMvista 6.2 software (MIMvista Corp, Cleveland, OH, USA) was used to select and measure structures throughout the body using the region-of-interest (ROI) tool within the software. Circular ROIs with a diameter of 10mm were drawn on transaxial FDG-PET/CT images using the fusion CT scan as an anatomical guide. Background FDG uptake measurement with 10mm ROI was conducted for the upper, middle and lower field of lung in both lungs (if a lung lesion happened to exist in the nearby lung field, the measurement was not performed due to the possibility of affected by tumor FDG uptake). For the aortic blood pool, a circular ROI with 10mm of diameter was placed centrally within the ascending aorta. For SUV measurements of malignant lesions on PET images, CT images of these lesions were used to confirm the exact location of suspected malignant lesions, with reference to diagnostic chest CT. The PETedge tool within MIMvista 6.2 was used with manual adjustment where needed by consensus of two nuclear medicine physicians for measurements of lung tumor. The longest diameter of identified FDG uptake area by the PETedge tool was measured and was regarded as the metabolic tumor diameter rather than the true diameter. The maximum SUV (SUVmax), average SUV (SUVmean), standard deviation of SUV metabolic tumor volume (MTV) and total lesion glycolysis (TLG: product of MTV and SUVmean) within a volume of interest (VOI) were recorded. By using these measurement results, inverse coefficient of variation [1/COV, calculated as (SUVmean/SD) ×100%] were additionally calculated as a marker of tumor heterogeneity. Additional metrics for tumor heterogeneity included the calculation of cumulative SUV-volume histograms (CSH) obtained by plotting the percent (SD), volume of a tumor with an SUV above a certain threshold against that threshold, which is varied from 0 to 100% of SUVmax. The area under the curve (AUC) of this plot (AUC-CSH) is a quantitative index of uptake heterogeneity, where lower values correspond with increased heterogeneity [32].
Figure 1

Images and measurement result of FDG PET parameter of lung tumor at right middle lobe

(A) Sagittal whole body PET image, (B) CT portion of PET/CT, (C) PET image (plotted the edge of lung tumor), and (D) fused PET and CT image, (E) cumulative SUV-volume histograms (CSH) : The area under the curve (AUC) of this plot (AUC-CSH) was 0.58.

Images and measurement result of FDG PET parameter of lung tumor at right middle lobe

(A) Sagittal whole body PET image, (B) CT portion of PET/CT, (C) PET image (plotted the edge of lung tumor), and (D) fused PET and CT image, (E) cumulative SUV-volume histograms (CSH) : The area under the curve (AUC) of this plot (AUC-CSH) was 0.58. Tumor heterogeneity analyses were performed only on cases with a metabolic tumor diameter of 10mm or more (117 of 131 cases) in order to have an adequate number of pixels within a region- or volume-of-interest.

Statistical analysis

Mann-Whitney's test was used to compare the difference of PET uptake in normal lung, and PET parameters according to the gene mutation result. We used univariate analysis and multivariate analysis to investigate the relationship between the parameters regarding FDG uptake for lung lesions and the presence of EGFR and KRAS mutations. We also used univariate analysis for the relationship between several indexes and FDG uptake in normal lungs. All statistical analyses were done with Stata 11 (Stata, College Station, TX). Calculated p-values were two-sided with a p <.05 considered statistically significant.
  45 in total

1.  Phase II study of preoperative gefitinib in clinical stage I non-small-cell lung cancer.

Authors:  Humberto Lara-Guerra; Thomas K Waddell; Maria A Salvarrey; Anthony M Joshua; Catherine T Chung; Narinder Paul; Scott Boerner; Akira Sakurada; Olga Ludkovski; Clement Ma; Jeremy Squire; Geoffrey Liu; Frances A Shepherd; Ming-Sound Tsao; Natasha B Leighl
Journal:  J Clin Oncol       Date:  2009-11-02       Impact factor: 44.544

2.  FDG uptake in non-small cell lung cancer is not an independent predictor of EGFR or KRAS mutation status: a retrospective analysis of 206 patients.

Authors:  Seok Mo Lee; Sang Kyun Bae; Soo Jin Jung; Chun K Kim
Journal:  Clin Nucl Med       Date:  2015-12       Impact factor: 7.794

3.  The IASLC Lung Cancer Staging Project: proposals for the revision of the TNM stage groupings in the forthcoming (seventh) edition of the TNM Classification of malignant tumours.

Authors:  Peter Goldstraw; John Crowley; Kari Chansky; Dorothy J Giroux; Patti A Groome; Ramon Rami-Porta; Pieter E Postmus; Valerie Rusch; Leslie Sobin
Journal:  J Thorac Oncol       Date:  2007-08       Impact factor: 15.609

4.  Role of [¹⁸F]FDG PET in prediction of KRAS and EGFR mutation status in patients with advanced non-small-cell lung cancer.

Authors:  Carlos Caicedo; Maria Jose Garcia-Velloso; Maria Dolores Lozano; Tania Labiano; Carmen Vigil Diaz; Jose Maria Lopez-Picazo; Alfonso Gurpide; Javier J Zulueta; Javier Zulueta; Jose Angel Richter Echevarria; Jose Luis Perez Gracia
Journal:  Eur J Nucl Med Mol Imaging       Date:  2014-07-03       Impact factor: 9.236

5.  Screening for epidermal growth factor receptor mutations in lung cancer.

Authors:  Rafael Rosell; Teresa Moran; Cristina Queralt; Rut Porta; Felipe Cardenal; Carlos Camps; Margarita Majem; Guillermo Lopez-Vivanco; Dolores Isla; Mariano Provencio; Amelia Insa; Bartomeu Massuti; Jose Luis Gonzalez-Larriba; Luis Paz-Ares; Isabel Bover; Rosario Garcia-Campelo; Miguel Angel Moreno; Silvia Catot; Christian Rolfo; Noemi Reguart; Ramon Palmero; José Miguel Sánchez; Roman Bastus; Clara Mayo; Jordi Bertran-Alamillo; Miguel Angel Molina; Jose Javier Sanchez; Miquel Taron
Journal:  N Engl J Med       Date:  2009-08-19       Impact factor: 91.245

6.  A randomized trial comparing preoperative chemotherapy plus surgery with surgery alone in patients with non-small-cell lung cancer.

Authors:  R Rosell; J Gómez-Codina; C Camps; J Maestre; J Padille; A Cantó; J L Mate; S Li; J Roig; A Olazábal
Journal:  N Engl J Med       Date:  1994-01-20       Impact factor: 91.245

7.  Correlation of F-18 fluorodeoxyglucose-positron emission tomography maximal standardized uptake value and EGFR mutations in advanced lung adenocarcinoma.

Authors:  Chun-Ta Huang; Rouh-Fang Yen; Mei-Fang Cheng; Ya-Chieh Hsu; Pin-Fei Wei; Yi-Ju Tsai; Meng-Feng Tsai; Jin-Yuan Shih; Chih-Hsin Yang; Pan-Chyr Yang
Journal:  Med Oncol       Date:  2009-01-07       Impact factor: 3.064

8.  Associations Between Somatic Mutations and Metabolic Imaging Phenotypes in Non-Small Cell Lung Cancer.

Authors:  Stephen S F Yip; John Kim; Thibaud P Coroller; Chintan Parmar; Emmanuel Rios Velazquez; Elizabeth Huynh; Raymond H Mak; Hugo J W L Aerts
Journal:  J Nucl Med       Date:  2016-09-29       Impact factor: 10.057

9.  Lung adjuvant cisplatin evaluation: a pooled analysis by the LACE Collaborative Group.

Authors:  Jean-Pierre Pignon; Hélène Tribodet; Giorgio V Scagliotti; Jean-Yves Douillard; Frances A Shepherd; Richard J Stephens; Ariane Dunant; Valter Torri; Rafael Rosell; Lesley Seymour; Stephen G Spiro; Estelle Rolland; Roldano Fossati; Delphine Aubert; Keyue Ding; David Waller; Thierry Le Chevalier
Journal:  J Clin Oncol       Date:  2008-05-27       Impact factor: 44.544

Review 10.  State of the art: Response assessment in lung cancer in the era of genomic medicine.

Authors:  Mizuki Nishino; Hiroto Hatabu; Bruce E Johnson; Theresa C McLoud
Journal:  Radiology       Date:  2014-04       Impact factor: 11.105

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  10 in total

1.  PET/CT Radiomic Features: A Potential Biomarker for EGFR Mutation Status and Survival Outcome Prediction in NSCLC Patients Treated With TKIs.

Authors:  Liping Yang; Panpan Xu; Mengyue Li; Menglu Wang; Mengye Peng; Ying Zhang; Tingting Wu; Wenjie Chu; Kezheng Wang; Hongxue Meng; Lingbo Zhang
Journal:  Front Oncol       Date:  2022-06-21       Impact factor: 5.738

2.  Diagnostic and Predictive Values of 18F-FDG PET/CT Metabolic Parameters in EGFR-Mutated Advanced Lung Adenocarcinoma.

Authors:  Il Ki Hong; Jeong Mi Lee; In Kyoung Hwang; Seung Sook Paik; Chanwoo Kim; Seung Hyeun Lee
Journal:  Cancer Manag Res       Date:  2020-07-28       Impact factor: 3.989

3.  Prognostic and Predictive Values of Metabolic Parameters of 18F-FDG PET/CT in Patients With Non-Small Cell Lung Cancer Treated With Chemotherapy.

Authors:  Xueyan Li; Dawei Wang; Lijuan Yu
Journal:  Mol Imaging       Date:  2019 Jan-Dec       Impact factor: 4.488

Review 4.  What can artificial intelligence teach us about the molecular mechanisms underlying disease?

Authors:  Gary J R Cook; Vicky Goh
Journal:  Eur J Nucl Med Mol Imaging       Date:  2019-06-12       Impact factor: 9.236

5.  A Shallow Convolutional Neural Network Predicts Prognosis of Lung Cancer Patients in Multi-Institutional CT-Image Data.

Authors:  Pritam Mukherjee; Mu Zhou; Edward Lee; Anne Schicht; Yoganand Balagurunathan; Sandy Napel; Robert Gillies; Simon Wong; Alexander Thieme; Ann Leung; Olivier Gevaert
Journal:  Nat Mach Intell       Date:  2020-05-18

6.  Relationship of EGFR Mutation to Glucose Metabolic Activity and Asphericity of Metabolic Tumor Volume in Lung Adenocarcinoma.

Authors:  Wonseok Whi; Seunggyun Ha; Sungwoo Bae; Hongyoon Choi; Jin Chul Paeng; Gi Jeong Cheon; Keon Wook Kang; Dong Soo Lee
Journal:  Nucl Med Mol Imaging       Date:  2020-06-14

7.  Next-generation sequencing-based identification of EGFR and NOTCH2 complementary mutations in non-small cell lung cancer.

Authors:  Lin Niu; Chunyan Dang; Lin Li; Na Guo; Ying Xu; Xiangling Li; Qian Xu; Luyang Cheng; Li Zhang; Lei Liu
Journal:  Oncol Lett       Date:  2021-06-07       Impact factor: 2.967

8.  Bone Marrow and Tumor Radiomics at 18F-FDG PET/CT: Impact on Outcome Prediction in Non-Small Cell Lung Cancer.

Authors:  Sarah A Mattonen; Guido A Davidzon; Jalen Benson; Ann N C Leung; Minal Vasanawala; George Horng; Joseph B Shrager; Sandy Napel; Viswam S Nair
Journal:  Radiology       Date:  2019-09-17       Impact factor: 29.146

9.  Diagnosis, clinicopathological characteristics and prognosis of pulmonary mucinous adenocarcinoma.

Authors:  Fei Sun; Pengcheng Wang; Yiming Zheng; Weiguang Jia; Fuxing Liu; Wei Xiao; Jingjing Bao; Song Wang; Kaijin Lu
Journal:  Oncol Lett       Date:  2017-10-31       Impact factor: 2.967

10.  Actionable Mutation Profiles of Non-Small Cell Lung Cancer patients from Vietnamese population.

Authors:  Anh-Thu Huynh Dang; Vu-Uyen Tran; Thanh-Truong Tran; Hong-Anh Thi Pham; Dinh-Thong Le; Lam Nguyen; Ngoc-Vu Nguyen; Thai-Hoa Thi Nguyen; Chu Van Nguyen; Ha Thu Le; Mai-Lan Thi Nguyen; Vu Thuong Le; Phuc Huu Nguyen; Binh Thanh Vo; Hong-Thuy Thi Dao; Luan Thanh Nguyen; Thien-Chi Van Nguyen; Quynh-Tram Nguyen Bui; Long Hung Nguyen; Nguyen Huu Nguyen; Quynh-Tho Thi Nguyen; Truong Xuan Le; Thanh-Thuy Thi Do; Kiet Truong Dinh; Han Ngoc Do; Minh-Duy Phan; Hoai-Nghia Nguyen; Le Son Tran; Hoa Giang
Journal:  Sci Rep       Date:  2020-02-17       Impact factor: 4.379

  10 in total

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