1.Skill validation study on sentinel lymph node biopsy in breast cancer and the challenges of false-negative, in-transit and micrometastatic nodes
Chen Siew Ng ; Sarojah Arulanantham ; Joon Joon Khoo ; Subathra Sabaratnam ; Yeong Fong Lee ; Chin Fang Ngim
The Medical Journal of Malaysia 2016;71(5):275-281
2.An analysis of predictive biomarkers in routine histopathological reporting of infi ltrating ductal breast carcinoma in a tertiary hospital in Malaysia with a focus on limitations and directions for future development
Kean-Hooi TEOH ; Lai-Meng LOOI ; Subathra SABARATNAM ; Phaik-Leng CHEAH ; Abdul Rahman NAZARINA ; Kein-Seong MUN
The Malaysian Journal of Pathology 2011;33(1):35-42
Predictive biomarkers such as oestrogen (ER) and progesterone (PR) receptors and c-erbB-2
oncoprotein have become a staple in breast cancer reports in the country as they increasingly
play an important role in the treatment and prognosis of women with breast cancers. This study
reviews the practice of histopathology reporting of these biomarkers in a Malaysian tertiary hospital
setting. Retrospective data on demographic, pathological and biomarker profi les of patients with
invasive ductal carcinoma who had undergone mastectomy or lumpectomy with axillary node
clearance from 2005 to 2006 were retrieved from the Department of Pathology, Penang Hospital
and analysed. The prevalence of ER positivity (55.8%), PR positivity (52.5%), c-erbB-2 oncoprotein
overexpression (24%) and triple negativity (ER negative, PR negative, c-erbB-2 negative) (15%)
by immunohistochemistry were comparable with other studies. Notably, c-erbB-2 overexpression
was equivocal (2+) in 15% of cases. Since about a quarter of equivocal (2+) cases usually show
amplifi cation by FISH, a small but certain percentage of patients would miss the benefi t of anti-cerbB-
2 antibody therapy if FISH is not performed. New ASCO/CAP guidelines on the quantitation
of ER and PR will probably increase the prevalence of ER/PR positivity, invariably leading to
signifi cant ramifi cations on the management of patients as more patients would be deemed eligible
for endocrine therapy, as well as categorisation of triple negative breast cancers.
3.Distinguishing benign from malignant pelvic mass utilizing an algorithm with HE4, menopausal status, and ultrasound findings.
Sarikapan WILAILAK ; Karen K L CHAN ; Chi An CHEN ; Joo Hyun NAM ; Kazunori OCHIAI ; Tar Choon AW ; Subathra SABARATNAM ; Sudarshan HEBBAR ; Jaganathan SICKAN ; Beth A SCHODIN ; Chuenkamon CHARAKORN ; Walfrido W SUMPAICO
Journal of Gynecologic Oncology 2015;26(1):46-53
OBJECTIVE: The purpose of this study was to develop a risk prediction score for distinguishing benign ovarian mass from malignant tumors using CA-125, human epididymis protein 4 (HE4), ultrasound findings, and menopausal status. The risk prediction score was compared to the risk of malignancy index and risk of ovarian malignancy algorithm (ROMA). METHODS: This was a prospective, multicenter (n=6) study with patients from six Asian countries. Patients had a pelvic mass upon imaging and were scheduled to undergo surgery. Serum CA-125 and HE4 were measured on preoperative samples, and ultrasound findings were recorded. Regression analysis was performed and a risk prediction model was developed based on the significant factors. A bootstrap technique was applied to assess the validity of the HE4 model. RESULTS: A total of 414 women with a pelvic mass were enrolled in the study, of which 328 had documented ultrasound findings. The risk prediction model that contained HE4, menopausal status, and ultrasound findings exhibited the best performance compared to models with CA-125 alone, or a combination of CA-125 and HE4. This model classified 77.2% of women with ovarian cancer as medium or high risk, and 86% of women with benign disease as very-low, low, or medium-low risk. This model exhibited better sensitivity than ROMA, but ROMA exhibited better specificity. Both models performed better than CA-125 alone. CONCLUSION: Combining ultrasound with HE4 can improve the sensitivity for detecting ovarian cancer compared to other algorithms.
Adult
;
*Algorithms
;
Biomarkers, Tumor/*blood
;
CA-125 Antigen/blood
;
Decision Support Techniques
;
Diagnosis, Differential
;
Female
;
Humans
;
Menopause
;
Middle Aged
;
Ovarian Neoplasms/*diagnosis/ultrasonography
;
Predictive Value of Tests
;
Prospective Studies
;
Proteins/*analysis
;
ROC Curve
;
Risk Assessment/methods
;
Sensitivity and Specificity